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[中文翻译版] 见附件   原文链接: https://community.nxp.com/t5/eIQ-Machine-Learning-Software/eIQ-on-i-MX-RT1064-EVK/ta-p/1123602 
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[中文翻译版] 见附件   原文链接: https://community.nxp.com/t5/i-MX-RT-Knowledge-Base/RT1050-HAB-Encrypted-Image-Generation-and-Analysis/ta-p/1124877  
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In the tutorial, I'd like to show the steps of deploying an image classification model on i.MX RT1060 to enabling you to classify fashion images and categories. In the first part of this tutorial, we will review the Fashion MNIST dataset, including how to download it to your system. From there we’ll define a simple CNN network using the TensorFlow platform. Next, we’ll train our CNN model on the Fashion MNIST dataset, train it, and review the results. Finally, we'll optimize the model, after that, the model will be smaller and increase inferencing speed, which is valuable for source-limited devices such as MCU. Let’s go ahead and get started! Fashion MNIST dataset The Fashion MNIST dataset was created by the e-commerce company, Zalando. Fig 1 Fashion MNIST dataset As they note on their official GitHub repo for the Fashion MNIST dataset, there are a few problems with the standard MNIST digit recognition dataset: It’s far too easy for standard machine learning algorithms to obtain 97%+ accuracy. It’s even easier for deep learning models to achieve 99%+ accuracy. The dataset is overused. MNIST cannot represent modern computer vision tasks. Zalando, therefore, created the Fashion MNIST dataset as a drop-in replacement for MNIST. 60,000 training examples 10,000 testing examples 10 classes: T-shirt/top, Trouser, Pullover, Dress, Coat, Sandal, Shirt, Sneaker, Bag, Ankle boot 28×28 grayscale images The code below loads the Fashion-MNIST dataset using the TensorFlow and creates a plot of the first 25 images in the training dataset. import tensorflow as tf import numpy as np # For easy reset of notebook state. tf.keras.backend.clear_session() # load dataset fashion_mnist = tf.keras.datasets.fashion_mnist (train_images, train_labels), (test_images, test_labels) = fashion_mnist.load_data() lass_names = ['T-shirt/top', 'Trouser', 'Pullover', 'Dress', 'Coat', 'Sandal', 'Shirt', 'Sneaker', 'Bag', 'Ankle boot'] plt.figure(figsize=(8,8)) for i in range(25): plt.subplot(5,5,i+1,) plt.tight_layout() plt.imshow(train_images[i]) plt.xlabel(lass_names[train_labels[i]]) plt.xticks([]) plt.yticks([]) plt.grid(False) plt.show() Fig 2 Running the code loads the Fashion-MNIST train and test dataset and prints their shape. Fig 3 We can see that there are 60,000 examples in the training dataset and 10,000 in the test dataset and that images are indeed square with 28×28 pixels. Creating model We need to define a neural network model for the image classify purpose, and the model should have two main parts: the feature extraction and the classifier that makes a prediction. Defining a simple Convolutional Neural Network (CNN) For the convolutional front-end, we build 3 layers of convolution layer with a small filter size (3,3) and a modest number of filters followed by a max-pooling layer. The last filter map is flattened to provide features to the classifier. As we know, it's a multi-class classification task, so we will require an output layer with 10 nodes in order to predict the probability distribution of an image belonging to each of the 10 classes. In this case, we will require the use of a softmax activation function. And between the feature extractor and the output layer, we can add a dense layer to interpret the features. All layers will use the ReLU activation function and the He weight initialization scheme, both best practices. We will use the Adam optimizer to optimize the sparse_categorical_crossentropy loss function, suitable for multi-class classification, and we will monitor the classification accuracy metric, which is appropriate given we have the same number of examples in each of the 10 classes. The below code will define and run it will show the struct of the model. # Define a Model model = tf.keras.models.Sequential() # First Convolution ,Kernel:16*3*3 model.add( tf.keras.layers.Conv2D(16, (3, 3), activation='relu', kernel_initializer='he_uniform',input_shape=(28, 28, 1))) model.add( tf.keras.layers.MaxPooling2D((2, 2))) # Second Convolution ,Kernel:32*3*3 model.add( tf.keras.layers.Conv2D(32, (3, 3), activation='relu',kernel_initializer='he_uniform')) model.add( tf.keras.layers.MaxPooling2D((2, 2))) # Third Convolution ,Kernel:32*3*3 model.add( tf.keras.layers.Conv2D(32, (3, 3), activation='relu',kernel_initializer='he_uniform')) model.add( tf.keras.layers.Flatten()) model.add( tf.keras.layers.Dense(32, activation='relu',kernel_initializer='he_uniform')) model.add( tf.keras.layers.Dense(10, activation='softmax')) Fig 4 Training Model After the model is defined, we need to train it. The model will be trained using 5-fold cross-validation. The value of k=5 was chosen to provide a baseline for both repeated evaluation and to not be too large as to require a long running time. Each validation set will be 20% of the training dataset or about 12,000 examples. The training dataset is shuffled prior to being split and the sample shuffling is performed each time so that any model we train will have the same train and validation datasets in each fold, providing an apples-to-apples comparison. We will train the baseline model for a modest 20 training epochs with a default batch size of 32 examples. The validation set for each fold will be used to validate the model during each epoch of the training run, so we can later create learning curves, and at the end of the run, we use the test dataset to estimate the performance of the model. As such, we will keep track of the resulting history from each run, as well as the classification accuracy of the fold. The train_model() function below implements these behaviors, taking the training dataset and test dataset as arguments, and returning a list of accuracy scores and training histories that can be later summarized. from sklearn.model_selection import KFold # train a model using k-fold cross-validation def train_model(dataX, dataY, n_folds=5): scores, histories = list(), list() # prepare cross validation kfold = KFold(n_folds, shuffle=True, random_state=1) for train_ix, validate_ix in kfold.split(dataX): # select rows for train and test trainX, trainY, validate_X, validate_Y = dataX[train_ix], dataY[train_ix], dataX[validate_ix], dataY[validate_ix] # fit model history = model.fit(trainX, trainY, epochs=20, batch_size=32, validation_data=(validate_X, validate_Y), verbose=0) # evaluate model _, acc = model.evaluate(validate_X, validate_Y, verbose=0) print("Accurary: {:.4f},Total number of figures is {:0>2d}".format(acc * 100.0, len(testY))) # append scores scores.append(acc) histories.append(history) return scores, histories Module Summary After the model has been trained, we can present the results. There are two key aspects to present: the diagnostics of the learning behavior of the model during training and the estimation of the model performance. These can be implemented using separate functions. First, the diagnostics involve creating a line plot showing model performance on the train and validate set during each fold of the k-fold cross-validation. These plots are valuable for getting an idea of whether a model is overfitting, underfitting, or has a good fit for the dataset. We will create a single figure with two subplots, one for loss and one for accuracy. Blue lines will indicate model performance on the training dataset and orange lines will indicate performance on the hold-out validate dataset. The summarize_diagnostics() function below creates and shows this plot given the collected training histories. # plot diagnostic learning curves def summarize_diagnostics(histories): for i in range(len(histories)): # plot loss plt.subplot(2,1,1) plt.title('Cross Entropy Loss') plt.plot(histories[i].history['loss'], color='blue', label='train') plt.plot(histories[i].history['val_loss'], color='orange', label='test') # plot accuracy plt.subplot(2,1,2) plt.title('Classification Accuracy') plt.plot(histories[i].history['accuracy'], color='blue', label='train') plt.plot(histories[i].history['val_accuracy'], color='orange', label='test') plt.show() Fig 5 Next, the classification accuracy scores collected during each fold can be summarized by calculating the mean and standard deviation. This provides an estimate of the average expected performance of the model trained on the test dataset, with an estimate of the average variance in the mean. We will also summarize the distribution of scores by creating and showing a box and whisker plot. The summarize_performance() function below implements this for a given list of scores collected during model training. # summarize model performance def summarize_performance(scores): # print summary print('Accuracy: mean={:.4f} std={:.4f}, n={:0>2d}'.format(np.mean(trained_scores)*100, np.std(trained_scores)*100, len(scores))) # box and whisker plots of results plt.boxplot(scores) plt.show()   Fig 6 Verifying predictions According to the above figure, we see that the final trained model can get up to around 87.6% accuracy when predicting the test dataset. And with the trained model, running the below code will demonstrate the result of predictions about some images. def plot_image(i, predictions_array, true_label, img): true_label, img = true_label[i], img[i] plt.grid(False) plt.xticks([]) plt.yticks([]) plt.imshow(img.reshape(28, 28), cmap=plt.cm.binary) predicted_label = np.argmax(predictions_array) if predicted_label == true_label: color = 'blue' else: color = 'red' plt.xlabel("{} {:2.0f}% ({})".format(class_names[predicted_label], 100*np.max(predictions_array), class_names[true_label]), color=color) def plot_value_array(i, predictions_array, true_label): true_label = true_label[i] plt.grid(False) plt.xticks(range(10)) plt.yticks([]) thisplot = plt.bar(range(10), predictions_array, color="#777777") plt.ylim([0, 1]) predicted_label = np.argmax(predictions_array) thisplot[predicted_label].set_color('red') thisplot[true_label].set_color('blue') predictions = model.predict(test_images) # Plot the first X test images, their predicted labels, and the true labels. # Color correct predictions in blue and incorrect predictions in red. num_rows = 5 num_cols = 3 num_images = num_rows*num_cols plt.figure(figsize=(2*2*num_cols, 2*num_rows)) for i in range(num_images): plt.subplot(num_rows, 2*num_cols, 2*i+1) plot_image(i, predictions[i], test_labels, test_images) plt.subplot(num_rows, 2*num_cols, 2*i+2) plot_value_array(i, predictions[i], test_labels) plt.tight_layout() plt.show()   Fig 7 Model quantization Post-training quantization is a conversion technique that can reduce model size while also improving CPU and hardware accelerator latency, with little degradation in model accuracy, especially it's crucial to embedded platforms, as it lacks the compute-intensive performance, the Flash and RAM memory is also very limited. TensorFlow Lite is able to be used to convert an already-trained float TensorFlow model to the TensorFlow Lite format. In addition, the TensorFlow Lite provides several approaches to optimize the mode, among these ways, Integer quantization is an optimization strategy that converts 32-bit floating-point numbers (such as weights and activation outputs) to the nearest 8-bit fixed-point numbers. This results in a smaller model and increased inferencing speed, which is very valuable for low-power devices such as microcontrollers. The below codes show how to implement the Integer quantization of the trained model, and after running these codes, we can find that the size of Tensorflow Lite mode reduces almost 64.9 KB versus the original model, becomes about 32% of the original size(Fig 8). import os # Convert using integer-only quantization def representative_data_gen(): for input_value in tf.data.Dataset.from_tensor_slices(tf.cast(train_images,tf.float32)).shuffle(500).batch(1).take(150): yield [input_value] # Convert using dynamic range quantization converter = tf.lite.TFLiteConverter.from_keras_model(model) converter.optimizations = [tf.lite.Optimize.DEFAULT] tflite_model_quant = converter.convert() # Save the model to disk open("model_dynamic_range_quantization.tflite", "wb").write(tflite_model_quant) ## Size difference Dynamic_range_quantization_model_size = os.path.getsize("model_dynamic_range_quantization.tflite") print("Dynamic range quantization model is %d bytes" % Dynamic_range_quantization_model_size) converter = tf.lite.TFLiteConverter.from_keras_model(model) converter.optimizations = [tf.lite.Optimize.DEFAULT] converter.representative_dataset = representative_data_gen # Ensure that if any ops can't be quantized, the converter throws an error converter.target_spec.supported_ops = [tf.lite.OpsSet.TFLITE_BUILTINS_INT8] # Set the input and output tensors to uint8 (APIs added in r2.3) converter.inference_input_type = tf.uint8 converter.inference_output_type = tf.uint8 tflite_model_advanced_quant = converter.convert() # Save the model to disk open("model_integer_only_quantization.tflite", "wb").write(tflite_model_advanced_quant) Integer_only_quantization_model_size = os.path.getsize("model_integer_only_quantization.tflite") print("Integer_only_quantization_model is %d bytes" % Integer_only_quantization_model_size) difference = Dynamic_range_quantization_model_size - Integer_only_quantization_model_size print("Difference is %d bytes" % difference) Fig 8 Evaluating the TensorFlow Lite model Now we'll run inferences using the TensorFlow Lite Interpreter to compare the model accuracies. First, we need a function that runs inference with a given model and images, and then returns the predictions: # Helper function to run inference on a TFLite model def run_tflite_model(tflite_file, test_image_indices): # Initialize the interpreter interpreter = tf.lite.Interpreter(model_path=str(tflite_file)) interpreter.allocate_tensors() input_details = interpreter.get_input_details()[0] output_details = interpreter.get_output_details()[0] predictions = np.zeros((len(test_image_indices),), dtype=int) for i, test_image_index in enumerate(test_image_indices): test_image = test_images[test_image_index] test_label = test_labels[test_image_index] # Check if the input type is quantized, then rescale input data to uint8 if input_details['dtype'] == np.uint8: input_scale, input_zero_point = input_details["quantization"] test_image = test_image / input_scale + input_zero_point test_image = np.expand_dims(test_image, axis=0).astype(input_details["dtype"]) interpreter.set_tensor(input_details["index"], test_image) interpreter.invoke() output = interpreter.get_tensor(output_details["index"])[0] predictions[i] = output.argmax() return predictions Next, we'll compare the performance of the original model and the quantized model on one image. model_basic_quantization.tflite is the original TensorFlow Lite model with floating-point data. model_integer_only_quantization.tflite is the last model we converted using integer-only quantization (it uses uint8 data for input and output). Let's create another function to print our predictions and run it for testing. import matplotlib.pylab as plt # Change this to test a different image test_image_index = 1 ## Helper function to test the models on one image def test_model(tflite_file, test_image_index, model_type): global test_labels predictions = run_tflite_model(tflite_file, [test_image_index]) plt.imshow(test_images[test_image_index].reshape(28,28)) template = model_type + " Model \n True:{true}, Predicted:{predict}" _ = plt.title(template.format(true= str(test_labels[test_image_index]), predict=str(predictions[0]))) plt.grid(False) Fig 9 Fig 10 Then evaluate the quantized model by using all the test images we loaded at the beginning of this tutorial. After summarizing the prediction result of the test dataset, we can see that the prediction accuracy of the quantized model decrease 7% less than the original model, it's not bad. # Helper function to evaluate a TFLite model on all images def evaluate_model(tflite_file, model_type): test_image_indices = range(test_images.shape[0]) predictions = run_tflite_model(tflite_file, test_image_indices) accuracy = (np.sum(test_labels== predictions) * 100) / len(test_images) print('%s model accuracy is %.4f%% (Number of test samples=%d)' % ( model_type, accuracy, len(test_images))) Deploying model Converting TensorFlow Lite model to C file The following code runs xxd on the quantized model, writes the output to a file called model_quantized.cc, in the file, the model is defined as an array of bytes, and prints it to the screen. The output is very long, so we won’t reproduce it all here, but here’s a snippet that includes just the beginning and end. # Save the file as a C source file xxd -i model_integer_only_quantization.tflite > model_quantized.cc # Print the source file cat model_quantized.cc Fig 11 Deploying the C file to project We use the tensorflow_lite_cifar10 demo as a prototype, then replace the original model and do some code modification, below is the code in the modified main file. #include "board.h" #include "fsl_debug_console.h" #include "pin_mux.h" #include "timer.h" #include <iomanip> #include <iostream> #include <string> #include <vector> #include "tensorflow/lite/kernels/register.h" #include "tensorflow/lite/model.h" #include "tensorflow/lite/optional_debug_tools.h" #include "tensorflow/lite/string_util.h" #include "get_top_n.h" #include "model.h" #define LOG(x) std::cout // ---------------------------- Application ----------------------------- // Lenet Mnist model input data size (bytes). #define LENET_MNIST_INPUT_SIZE 28*28*sizeof(char) // Lenet Mnist model number of output classes. #define LENET_MNIST_OUTPUT_CLASS 10 // Allocate buffer for input data. This buffer contains the input image // pre-processed and serialized as text to include here. uint8_t imageData[LENET_MNIST_INPUT_SIZE] = { #include "clothes_select.inc" }; /* Tresholds */ #define DETECTION_TRESHOLD 60 /*! * @brief Initialize parameters for inference * * @param reference to flat buffer * @param reference to interpreter * @param pointer to storing input tensor address * @param verbose mode flag. Set true for verbose mode */ void InferenceInit(std::unique_ptr<tflite::FlatBufferModel> &model, std::unique_ptr<tflite::Interpreter> &interpreter, TfLiteTensor** input_tensor, bool isVerbose) { model = tflite::FlatBufferModel::BuildFromBuffer(Fashion_MNIST_model, Fashion_MNIST_model_len); if (!model) { LOG(FATAL) << "Failed to load model\r\n"; return; } tflite::ops::builtin::BuiltinOpResolver resolver; tflite::InterpreterBuilder(*model, resolver)(&interpreter); if (!interpreter) { LOG(FATAL) << "Failed to construct interpreter\r\n"; return; } int input = interpreter->inputs()[0]; const std::vector<int> inputs = interpreter->inputs(); const std::vector<int> outputs = interpreter->outputs(); if (interpreter->AllocateTensors() != kTfLiteOk) { LOG(FATAL) << "Failed to allocate tensors!"; return; } /* Get input dimension from the input tensor metadata assuming one input only */ *input_tensor = interpreter->tensor(input); auto data_type = (*input_tensor)->type; if (isVerbose) { const std::vector<int> inputs = interpreter->inputs(); const std::vector<int> outputs = interpreter->outputs(); LOG(INFO) << "input: " << inputs[0] << "\r\n"; LOG(INFO) << "number of inputs: " << inputs.size() << "\r\n"; LOG(INFO) << "number of outputs: " << outputs.size() << "\r\n"; LOG(INFO) << "tensors size: " << interpreter->tensors_size() << "\r\n"; LOG(INFO) << "nodes size: " << interpreter->nodes_size() << "\r\n"; LOG(INFO) << "inputs: " << interpreter->inputs().size() << "\r\n"; LOG(INFO) << "input(0) name: " << interpreter->GetInputName(0) << "\r\n"; int t_size = interpreter->tensors_size(); for (int i = 0; i < t_size; i++) { if (interpreter->tensor(i)->name) { LOG(INFO) << i << ": " << interpreter->tensor(i)->name << ", " << interpreter->tensor(i)->bytes << ", " << interpreter->tensor(i)->type << ", " << interpreter->tensor(i)->params.scale << ", " << interpreter->tensor(i)->params.zero_point << "\r\n"; } } LOG(INFO) << "\r\n"; } } /*! * @brief Runs inference input buffer and print result to console * * @param pointer to image data * @param image data length * @param pointer to labels string array * @param reference to flat buffer model * @param reference to interpreter * @param pointer to input tensor */ void RunInference(const uint8_t* image, size_t image_len, const std::string* labels, std::unique_ptr<tflite::FlatBufferModel> &model, std::unique_ptr<tflite::Interpreter> &interpreter, TfLiteTensor* input_tensor) { /* Copy image to tensor. */ memcpy(input_tensor->data.uint8, image, image_len); /* Do inference on static image in first loop. */ auto start = GetTimeInUS(); if (interpreter->Invoke() != kTfLiteOk) { LOG(FATAL) << "Failed to invoke tflite!\r\n"; return; } auto end = GetTimeInUS(); const float threshold = (float)DETECTION_TRESHOLD /100; std::vector<std::pair<float, int>> top_results; int output = interpreter->outputs()[0]; TfLiteTensor *output_tensor = interpreter->tensor(output); TfLiteIntArray* output_dims = output_tensor->dims; // assume output dims to be something like (1, 1, ... , size) auto output_size = output_dims->data[output_dims->size - 1]; /* Find best image candidates. */ GetTopN<uint8_t>(interpreter->typed_output_tensor<uint8_t>(0), output_size, 1, threshold, &top_results, false); if (!top_results.empty()) { auto result = top_results.front(); const float confidence = result.first; const int index = result.second; if (confidence * 100 > DETECTION_TRESHOLD) { LOG(INFO) << "----------------------------------------\r\n"; LOG(INFO) << " Inference time: " << (end - start) / 1000 << " ms\r\n"; LOG(INFO) << " Detected: " << std::setw(10) << labels[index] << " (" << (int)(confidence * 100) << "%)\r\n"; LOG(INFO) << "----------------------------------------\r\n\r\n"; } } } /*! * @brief Main function */ int main(void) { const std::string labels[] = {"T-shirt/top", "Trouser","Pullover", "Dress", "Coat", "Sandal", "Shirt", "Sneaker", "Bag", "Ankle boot"}; /* Init board hardware. */ BOARD_ConfigMPU(); BOARD_InitPins(); BOARD_BootClockRUN(); BOARD_InitDebugConsole(); InitTimer(); std::unique_ptr<tflite::FlatBufferModel> model; std::unique_ptr<tflite::Interpreter> interpreter; TfLiteTensor* input_tensor = 0; InferenceInit(model, interpreter, &input_tensor, false); LOG(INFO) << "Fashion MNIST object recognition example using a TensorFlow Lite model.\r\n"; LOG(INFO) << "Detection threshold: " << DETECTION_TRESHOLD << "%\r\n"; /* Run inference on static ship image. */ LOG(INFO) << "\r\nStatic data processing:\r\n"; RunInference((uint8_t*)imageData, (size_t)LENET_MNIST_INPUT_SIZE, labels, model, interpreter, input_tensor); while(1) {} } Testing result After deploying the model in the demo project, then we'll run this demo on the MIMXRT1060 (Fig 12) board for testing. Fig 12 Run the below code to covert the Fashion MNIST image to text The process_image() function can convert a Fashion MNIST image to an include file as static data, then include this file in the demo project. def process_image(image, output_path, num_batch=1): img_data = np.transpose(image, (2, 0, 1)) # Repeat image for batch processing (resulting tensor is NCHW or NHWC) img_data = np.reshape(img_data, (num_batch, img_data.shape[0], img_data.shape[1], img_data.shape[2])) img_data = np.repeat(img_data, num_batch, axis=0) img_data = np.reshape(img_data, (num_batch, img_data.shape[1], img_data.shape[2], img_data.shape[3])) # Serialize image batch img_data_bytes = bytearray(img_data.tobytes(order='C')) image_bytes_per_line = 20 with open(output_path, 'wt') as f: idx = 0 for byte in img_data_bytes: f.write('0X%02X, ' % byte) if idx % image_bytes_per_line == (image_bytes_per_line - 1): f.write('\n') idx = idx + 1 # Return serialized image size return len(img_data_bytes)      2. Run the demo project on board.
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This document describes the different source clocks and the main modules that manage which clock source is used to derive the system clocks that exists on the i.MX RT’s devices. It’s important to know the different clock sources available on our devices, modifying the default clock configuration may have different purposes since increasing the processor performance, achieving specific baud rates for serial communications, power saving, or simply getting a known base reference for a clock timer. The hardware used for this document is the following: i.MX RT: EVK-MIMXRT1060 Keep in mind that the described hardware and management clock modules in this document are a general overview of the different platforms and the devices listed above are used as a reference example, some terms and hardware modules functionality may vary between devices of the same platform. For more detailed information about the device hardware modules, please refer to your specific device Reference Manual. RT platforms The Clock Controller Module(CCM) facilitates the clock generation in the RT platforms, many clocking variations are possible and the maximum clock frequency for the i.MX RT1060 device is @600MHz.The following image shows a block diagram of the CCM, the three marked sub-modules are important to understand all the clock path from the clock generation(oscillators or crystals) to the clock management for all the peripherals of the board.    Figure 1. Clock Controller Module(CCM) Block Diagram        CCM Analog Submodule This submodule contains all the oscillators and several PLL’s that provide a clock source to the principal CMM module. For example, the i.MX RT1060 device supports 2 internal oscillators that combined with suitable external quartz crystal and external load capacitors provide an accurate clock source, another 2 internal oscillators are available for low power modes and as a backup when the system detects a loss of clock. These oscillators provide a fixed frequency for the several PLL’s inside this module. Internal Clock Sources with external components  Crystal Oscillator @24MHz Many of the serial IO modules depend on the fixed frequency of 24 MHz. The reference clock that generates this crystal oscillator provides an accurate clock source for all the PLL inputs.  Crystal Oscillator @32KHz Generally, RTC oscillators are either implemented with 32 kHz or 32.768 kHz crystals. This Oscillator should always be active when the chip is powered on. Internal Clock sources RC Oscillator @24MHz A lower-power RC oscillator module is available on-chip as a possible alternative to the 24 MHz crystal oscillator after a successful power-up sequence. The 24 MHz RC oscillator is a self-tuning circuit that will output the programmed frequency value by using the RTC clock as its reference. While the power consumption of this RC oscillator is much lower than the 24MHz crystal oscillator, one limitation of this RC oscillator module is that its clock frequency is not as accurate. Oscillator @32KHz The internal oscillator is automatically multiplexed in the clocking system when the system detects a loss of clock. The internal oscillator will provide clocks to the same on-chip modules as the external 32kHz oscillator. Also is used to be useful for quicker startup times and tampering prevention. Note. An external 32KHz clock source must be used since the internal oscillator is not precise enough for long term timekeeping. PLLs There are 7 PLLs in the i.MXRT1060 platform, some with specific functions, for example, create a reference clock for the ARM Core, USB peripherals, etc. Below these PLLs are listed. PLL1 - ARM PLL (functional frequency @600 MHz) PLL2 - System PLL (functional frequency @528 MHz)* PLL3 - USB1 PLL (functional frequency @480 MHz)* PLL4 - Audio PLL PLL5 - Video PLL PLL6 - ENET PLL PLL7 - USB2 PLL (functional frequency @480 MHz) * Two of these PLLs are each equipped with four Phase Fractional Dividers (PFDs) in order to generate additional frequencies for many clock roots.  Each PLLs configuration and control functions like Bypass, Output Enable/Disable, and Power Down modes are accessible individually through its PFDs and global configuration and status registers found at the CCM internal memory registers.        Clock Control Module(CCM) The Clock Control Module (CCM) generates and controls clocks to the various modules in the design and manages low power modes. This module uses the available clock sources(PLL reference clocks and PFDs) to generate the clock roots. There are two important sub-blocks inside the CCM listed below. Clock Switcher This sub-block provides the registers that control which PLLs and PFDs outputs are selected as the reference clock for the Clock Root Generator.  Clock Root Generator This sub-block provides the registers that control most of the secondary clock source programming, including both the primary clock source selection and the clock dividers. The clock roots are each individual clocks to the core, system buses, and all other SoC peripherals, among those, are serial clocks, baud clocks, and special function blocks. All of these clock references are delivered to the Low Power Clock Gating unit(LPCG).        Low Power Clock Gating unit(LPCG) The LPCG block receives the root clocks from CCM and splits them to clock branches for each peripheral. The clock branches are individually gated clocks. The following image shows a detailed block diagram of the CMM with the previously described submodules and how they link together. Figure 2. Clock Management System Example: Configure The ARM Core Clock (PLL1) to a different frequency. The Clock tools available in MCUXpresso IDE, allows you to understand and configure the clock source for the peripherals in the platform. The following diagram shows the default PLL1 mode configured @600MHz, the yellow path shows all the internal modules involved in the clock configuration.  Figure 3. Default PLL configuration after reset. From the previous image notice that PLL1 is attached from the 24MHz oscillator, then the PLL1 is configured with a pre-scaler of 50 to achieve a frequency @1.2GHz, finally, a frequency divider by 2 let a final frequency @600MHz. 1.1 Modify the PLL1 frequency For example, you can use the Clock tools to configure the PLL pre-scaler to 30, select the PLL1 block and then edit the pre-scaler value, therefore, the final clock frequency is @360MHz, these modifications are shown in the following figure.  Figure 4. PLL1 @720MHz, final frequency @360MHz    1.2 Export clock configuration to the project After you complete the clock configuration, the Clock Tool will update the source code in clock_config.c and clock_config.h, including all the clock functional groups that we created with the tool. This will include the clock source for specific peripherals. In the previous example, we configured the PLL1 (ARM PLL) to a functional frequency @360MHz; this is translated to the following structure in source code: “armPllConfig_BOARD_BootClockRUN” and it’s used by “CLOCK_InitArmPll();” inside the “BOARD_BootClockPLL150MRUN();” function.     Figure 5. PLL1 configuration struct  Figure 6. PLL configuration function Example: The next steps describe how to select a clock source for a specific peripheral. 1.1 Configure clock for specific peripheral For example, using the GPT(General Purpose Timer) the available clock sources are the following: Clock Source Off Peripheral Clock High-Frequency Reference Clock Clock Source from an external pin Low-Frequency Reference Clock Crystal Oscillator Figure 7. General Purpose Timer Clocks Diagram Using the available SDK example project “evkmimxrt1060_gpt_timer” a configuration struct for the peripheral “gptConfig” is called from the main initialization function inside the gpt_timer.c source file, the default configuration function with the configuration struct as a parameter, is shown in the following figure. Figure 8. Function that returns a GPT default configuration parameters The function loads several parameters to the configuration struct(gptConfig), one of the fields is the Clock Source configuration, modifying this field will let us select an appropriate clock source for our application, the following figure shows the default configuration parameters inside the “GPT_GetDefaultConfig();” function.  Figure 9. Configuration struct In the default GPT configuration struct, the Peripheral Clock(kGPT_CLockSource_Periph) is selected, the SDK comes with several macros located at “fsl_gpt.h” header file, that helps to select an appropriate clock source. The next figure shows an enumerated type of data that contains the possible clock sources for the GPT.  Figure 10. Available clock sources of the GPT. For example, to select the Low-Frequency Reference Clock the source code looks like the following figure.  Figure 11. Low-Frequency Reference Clock attached to GPT Notice that all the peripherals come with a specific configuration struct and from that struct fields the default clocking parameters can be modified to fit with our timing requirements. 1.2 Modify the Peripheral Clock frequency from Clock Tools One of the GPT clock sources is the “Peripheral Clock Source” this clock line can be modified from the Clock Tools, the following figure shows the default frequency configuration from Clock Tools view. Figure 12. GPT Clock Root inside CMM In the previous figure, the GPT clock line is @75MHz, notice that this is sourced from the primary peripheral clock line that is @600MHz attached to the ARM core clocks. For example, modify the PERCLK_PODF divider selecting it and changing the divider value to 4, the resulting frequency is @37.5Mhz, the following figure illustrates these changes.  Figure 13. GPT & PIT clock line @37.5MHz 1.3 Export clock configuration to the project After you complete the clock configuration, the Clock Tool will update the source code in clock_config.c and clock_config.h, including all the clock functional groups that we created with the tool. This will include the clock source for specific peripherals. In the previous example, we configured the GPT clock root divider by a dividing factor of 4 to achieve a 37.5MHz frequency; this is translated to the following instruction in source code: “CLOCK_SetDiv(kCLOCK_PerclkDiv,3);” inside the “BOARD_BootClockRUN();” function.                Figure 14. Frequency divider function References i.MX RT1060 Processor Reference Manual Also visit LPC's System Clocks  Kinetis System Clocks
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                                      配置RT600开发环境 RT600开发入门培训视频。 https://www.nxp.com/document/guide/getting-started-with-i-mx-rt600-evaluation-kit:GS-MIMXRT685-EVK?&tid=vanGS-MIMXRT685-EVK#title2.1   下载I.MX RT600 SDK。下载链接: https://mcuxpresso.nxp.com/en/select?device=EVK-MIMXRT685     下载MCUXpresso IDE。注意需要安装MCUXpresso IDE 11.1.1及最新版本。https://www.nxp.com/webapp/swlicensing/sso/downloadSoftware.sp?catid=MCUXPRESSO               下载安装LPCScrypt,可以将默认板载的CMSIS-DAP固件升级改为J-LINK。通过J-LINK,可以下载调试HiFi4 DSP固件。下载链接https://www.nxp.com/design/microcontrollers-developer-resources/lpc-microcontroller-utilities/lpcscrypt-v2-1-1:LPCSCRYPT?&tab=Design_Tools_Tab     下载安装J-LINK驱动。下载链接https://www.segger.com/downloads/jlink/   下载安装Cadence HiFi 4 DSP IDE for MIMXRT600。 第一次下载,注册用户https://tensilicatools.com/register/。国内用户注册时,如果页面没有出现下面人机身份验证,说明IP被GW Firewall屏蔽了。需要通过代理或者其他特殊手段,否则用户注册将无法成功提交。   下载HiFi DSP Development Tools for i.MX RT600开发工具。 https://tensilicatools.com/download/rt600-download-page/   申请License for RT600 SDK。注意输入绑定网卡MAC地址时,需要去除中间‘:’等字符,否则提示失败。   申请成功后,可以下载License文件。   启动Xplorer 8.0.13后,在菜单Help -- Xplorer License Keys安装License文件。安装成功后显示如下:     Xplorer下载调试器配置。 将xt-ocd.exe所在目录加入到系统Path环境变量。   使能”Use XOCD Manager”,指定Topology File   设置Download binary为Always,取消每次下载前都弹出提示框,节省下载时间。     通过J-Link下载HiFi4 DSP固件,可以单步调试代码。    
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This is the recording of the Crossover Code challenge Webinar presented on December 10.
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The i.MX RT600 crossover MCU combines an ultra-low power MCU with a high performance DSP to enable the next generation of ML/AI, voice and audio applications. Get started today and order your MIMXRT685-EVK.
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The newly announced i.MX RT1170 is a dual-core Arm® Cortex®-M based crossover MCU that breaks the gigahertz (GHz) barrier and accelerates advanced Machine Learning (ML) applications at the edge.  Built using advanced 28nm FD-SOI technology for lower active and static power requirements, i.MX RT1170 MCU family integrates a GHz Arm Cortex-M7 and power-efficient Cortex-M4, advanced 2D vector graphics, together with NXP’s signature EdgeLock security solution.  The i.MX RT1170 delivers a total CoreMark score of 6468 and address the growing performance needs of edge computing for industrial, Internet-of-Things (IoT) and automotive applications
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MIMXRT1010 EVK (Chinese Version)  Design Files and Hardwre User's Guide 
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i.MX RT6xx The RT6xx is a crossover MCU family is a breakthrough product combining the best of MCU and DSP functionality for ultra-low power secure Machine Learning (ML) / Artificial Intelligence (AI) edge processing, performance-intensive far-field voice and immersive 3D audio playback applications. Fig 1 is the block diagram for the i.MX RT600. It consists of a Cortex-M33 core that runs up to 300 MHz with 32KB FlexSPI cache and an optional HiFi4 DSP that runs up to 600MHz with 96KB DSP cache and 128KB DSP TCM. It also contains a cryptography engine and DSP/Math accelerator in the PowerQuad co-processor. The device has 4.5MB on-chip SRAM. Key features include the rich audio peripherals, the high-speed USB with PHY and the advanced on-chip security. There is a Flexcomm peripheral that supports the configuration of numerous UARTs, SPI, I2C, I2S, etc. Fig 1 Create a eIQ (TensorFlow Lite library) demo In the latest version of SDK for the i.MX RT600, it still doesn't contain the demos about the Machine Learning (ML) / Artificial Intelligence (AI), so it needs the developers to create this kind of demo by themself. To implement it, port the eIQ demos cross from i.MX RT1050/1060 to i.MX RT685 is the quickest way. The below presents the steps of creating a eIQ (TensorFlow Lite library) demo. Greate a new C++ project Install SDK library Fig 2 Create a new C++ project using installed SDK Part In the MCUXpresso IDE User Guide, Chapter 5 Creating New Projects using installed SDK Part Support presents how to create a new project, please refer to it for details Porting tensorflow-lite Copy the tensorflow-lite library to the target project Copy the TensorFlow-lite library corresponding files to the target project Fig 3 Add the paths for the above files Fig 4 Fig 5 Fig 6 Porting main code The main() code is from the post: The “Hello World” of TensorFlow Lite Testing On the MIMXRT685 EVK Board (Fig 7), we record the input data: x_value and the inferenced output data: y_value via the Serial Port (Fig 8). Fig 7 Fig 8 In addition, we use Excel to display the received data against our actual values as the below figure shows. Fig 9 In general, In general, it has replicated the result of the The “Hello World” of TensorFlow Lite Troubleshoot In default, the created project doesn't support print float, so it needs to enable this feature by adding below symbols (Fig 10). Fig 10 When a neural network is executed, the results of one layer are fed into subsequent operations and so must be kept around for some time. The lifetimes of these activation layers vary depending on their position in the graph, and the memory size needed for each is controlled by the shape of the array that a layer writes out. These variations mean that it’s necessary to calculate a plan over time to fit all these temporary buffers into as small an area of memory as possible. Currently, this is done when the model is first loaded by the interpreter, so if the area is not big enough, you’ll see a crash event happen. Regard to this application demo, the default heap size is 4 KB, obviously, it's not big enough to store the model’s input, output, and intermediate tensors, as the codes will be stuck at hard-fault interrupt function (Fig 11). Fig 11 So, how large should we allocate the heap area? That’s a good question. Unfortunately, there’s not a simple answer. Different model architectures have different sizes and numbers of input, output, and intermediate tensors, so it’s difficult to know how much memory we’ll need. The number doesn’t need to be exact—we can reserve more memory than we need—but since microcontrollers have limited RAM, we should keep it as small as possible so there’s space for the rest of our program. We can do this through trial and error. For this application demo, the code works well after increasing ten times than the previous heap size (Fig 12). Fig 12
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RT1050 SDRAM app code boot from SDcard burn with 3 tools Abstract       This document is about the RT series app running on the external SDRAM, but boot from SD card. The content contains SDRAM app code generate with the RT1050 SDK MCUXpresso IDE project, burn the code to the external SD card with flashloader MFG tool, and MCUXPresso Secure Provisioning. The MCUBootUtility method can be found from this post: https://community.nxp.com/docs/DOC-346194       Software and Hardware platform: SDK 2.7.0_EVKB-IMXRT1050 MCUXpresso IDE MXRT1050_GA MCUBootUtility MCUXPresso Secure Provisioning MIMXRT1050-EVKB 2 RT1050 SDRAM app image generation     Porting SDK_2.7.0_EVKB-IMXRT1050 iled_blinky project to the MCUXPresso IDE, to generate the code which is located in SDRAM, the configuration is modified like the following items:       2.1 Copy code to RAM 2.2  Modify memory location to SDRAM address 0X80002000 The code which boots from SD card and running in the SDRAM is the non-xip code, so the IVT offset is 0X400, in our test, we put the image from the SDRAM memory address 0x800002000, the configuration is: 2.3 Modify the symbol 2.4 Generate the .s19 file      After build has no problems, then generate the app.s19 file:   Rename the app.19 image file to evkbimxrt1050_iled_blinky_sdram_0x2000.s19, and copy it to the flashloader folder: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\elftosb\win   3, Flashloader configuration and download    This chapter will use flashloader to configure the image which can download the SDRAM app code to the external SD card with MFGTool.       We need to prepare the following files: SDRAM interface configuration file CFG_DCD.bin imx-sdram-unsigned-dcd.bd program_sdcard_image.bd 3.1 SDRAM DCD file preparation      MIMXRT1050-EVKB on board SDRAM is IS42S16160J, we can use the attached dcd_model\ISSI_IS42S16160J\dcd.cfg and dcdgen.exe tool to generate the CFG_DCD.bin, the commander is: dcdgen -inputfile=dcd.cfg -bout -cout   Copy CFG_DCD.bin file to the flashloader path: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\elftosb\win 3.2 imx-sdram-unsigned-dcd.bd file Prepare the imx-sdram-unsigned-dcd.bd file content as: options {     flags = 0x00;     startAddress = 0x80000000;     ivtOffset = 0x400;     initialLoadSize = 0x2000;     DCDFilePath = "CFG_DCD.bin";     # Note: This is required if the default entrypoint is not the Reset_Handler     #       Please set the entryPointAddress to Reset_Handler address     entryPointAddress = 0x800022f1; }   sources {     elfFile = extern(0); }   section (0) { }  The above entrypointAddress data is from the .s19 reset handler(0X80002000+4 address data): Copy imx-sdram-unsigned-dcd.bd file to flashloader path: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\elftosb\win Open cmd, run the following command: elftosb.exe -f imx -V -c imx-sdram-unsigned-dcd.bd -o ivt_evkbimxrt1050_iled_blinky_sdram_0x2000.bin evkbimxrt1050_iled_blinky_sdram_0x2000.s19 After running the command, two app IVT files will be generated: 3.3 program_sdcard_image.bd file Prepare the program_sdcard_image.bd file content as: # The source block assign file name to identifiers sources {  myBootImageFile = extern (0); }   # The section block specifies the sequence of boot commands to be written to the SB file section (0) {       #1. Prepare SDCard option block     load 0xd0000000 > 0x100;     load 0x00000000 > 0x104;       #2. Configure SDCard     enable sdcard 0x100;       #3. Erase blocks as needed.     erase sdcard 0x400..0x14000;       #4. Program SDCard Image     load sdcard myBootImageFile > 0x400;         #5. Program Efuse for optimal read performance (optional)     # Note: It is just a template, please program the actual Fuse required in the application     # and remove the # to enable the command     #load fuse 0x00000000 > 0x07;   } Copy program_sdcard_image.bd to the flashloader path: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\elftosb\win Open cmd, run the following command: elftosb.exe -f kinetis -V -c program_sdcard_image.bd -o boot_image.sb ivt_evkbimxrt1050_iled_blinky_sdram_0x2000_nopadding.bin Copy the generated boot_image.sb file to the following flashloader path: \Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\mfgtools-rel\Profiles\MXRT105X\OS Firmware 3.4 MFGTool burn code to SD card    Prepare one SD card, insert it to J20, let the board enter the serial download mode, SW7:1-ON 2-OFF 3-OFF 4-ON. Find two USB cable, one is connected to J28, another is connected to J9, we use the HID to download the image.    Open MFGTool.exe, and click the start button:          Modify the boot mode to internal boot, and boot from the external SD card, SW7:1-ON 2-OFF 3-ON 4-OFF.      Power off and power on the board again, you will find the onboard LED D18 is blinking, it means the external SDRAM APP code is boot from external SD card successfully. 4, MCUBootUtility configuration and code download    Please check this community document: https://community.nxp.com/docs/DOC-346194     Here just give one image readout memory map, it will be useful to understand the image location information:     After download, we can readout the SD card image, from 0X400 is the IVT, BD, DCD data, from 0X1000 is the image which is the same as the app.s19 file.     5, MCUXpresso Secure Provisioning configuration and download   This software is released in the NXP official website, it is also the GUI version, which can realize the normal code and the secure code downloading, it will be more easy to use than the flashloader tool, customer don’t need to input the command, the tool help the customer to do it, the function is similar to the MCUBootUtility, MCUBootUtility tool is the opensource tool which is shared in the github, but is not released in the NXP official website.   Now, we use the new official realized tool to download the SDRAM app code to the external SD card, the board still need to enter the serial download mode, just like the flashloader and the MCUBootUtility too, the detail operation is:  We can find this tool is also very easy to use, customer still need to provide the app.19 and the dcd.bin, then give the related boot device configuration is OK.    After the code is downloaded successfully, modify the boot mode to internal boot, and boot from the external SD card, SW7:1-ON 2-OFF 3-ON 4-OFF.     Power off and power on the board again, you will find the onboard LED D18 is blinking, it means the external SDRAM APP code is boot from external SD card successfully.   Until now, all the three methods to download the SDRAM app code to the SD card is working, flashloader is the command based tool, MCUBootUtility and MCUXPresso Secure Provisioning is the GUI tool, which is more easy to use.        
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Introduction A common need for GUI applications is to implement a clock function.  Whether it be to create a clock interface for the end user's benefit, or just to time animations or other actions, implementing an accurate clock is a useful and important feature for GUI applications.  The aim of this document is to help you implement clock functions in your AppWizard project.   Methods When implementing a real-time clock, there are a couple of general methods to do so.   Use an independent timer in your MCU Using animation objects Each of these methods have their advantages and disadvantages.  If you just need a timer that doesn't require extra code and you don't require control or assurance of precision, or maybe you can't spare another timer, using an animation object (method #2) may be a good option in that application.  If your application requires an assurance of precision or requires other real-time actions to be performed that AppWizard can't control, it is best to implement an independent timer in your MCU (method #1).  Method 1:  Independent MCU Timer Implementing a timer via an independent MCU timer allows better control and guarantees the precision because it isn't a shared clock and the developer can adjust the interrupt priorities such that the timer interrupt has the highest priority.  AppWizard timing uses a common timer and then time slices activities similar to how an operating system works.  It is for this reason that implementing an independent MCU timer is best when you need control over the precision of the timer or you need other real-time actions to be triggered by this timer.  When implementing a timer using an independent MCU timer (like the RTC module), an understanding of how to interact with Text widgets is needed. Let's look at this first.   Interacting with Text Widgets Editing Text widgets occurs through the use of the emWin library API (the emWin library is the underlying code that AppWizard builds upon). The Text widget API functions are documented in the emWin Graphic Library User Guide and Reference Manual, UM3001.  Most of the Text widget API functions require a Text widget handle.  Be sure to not confuse this handle for the AppWizard ID.  Imagine a clock example where there are two Text widgets in the interface:  one for the minutes and one for the seconds.  The AppWizard IDs of these objects might be ID_TEXT_MINS and ID_TEXT_SECONDS respectively (again, these are not to be confused with the handle to the Text widget for use by emWin library functions).  The first action software should take is to obtain the handle for the Text widgets.   This can be done using the WM_GetDialogItem function.  The code to get the active window handle and the handle for the two Text widgets is shown below: activeWin = WM_GetActiveWindow(); textBoxMins = WM_GetDialogItem(activeWin, ID_TEXT_MINS); textBoxSecs = WM_GetDialogItem(activeWin, ID_TEXT_SECONDS);‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍ Note that this function requires the handle to the parent window of the Text widget.  If your application has multiple windows or screens, you may need to be creative in how you acquire this handle, but for this example, the software can simply call the WM_GetActiveWindow function (since there is only one screen).  When to call these functions can be a bit tricky as well.  They can be called before the MainTask() function of the application is called and the application will not crash.  However, the handles won't be correct and the Text widgets will not be updated as expected.  It's recommended that these handles be initialized when the screen is initialized.  An example of how this would be done is shown below: void cbID_SCREEN_CLOCK(WM_MESSAGE * pMsg) { extern WM_HWIN activeWin; extern WM_HWIN textBoxMins; extern WM_HWIN textBoxSecs; extern WM_HWIN textBoxDbg; if(pMsg->MsgId == WM_INIT_DIALOG) { activeWin = WM_GetActiveWindow(); textBoxMins = WM_GetDialogItem(activeWin, ID_TEXT_MINS); textBoxSecs = WM_GetDialogItem(activeWin, ID_TEXT_SECONDS); textBoxDbg = WM_GetDialogItem(activeWin, ID_TEXT_DBG); } GUI_USE_PARA(pMsg); }‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍ Once the Text widget handles have been acquired, the text can be updated using the TEXT_SetText() function or the TEXT_SetDec() function in this case, because the Text widgets are configured for decimal mode, since we want to display numbers.  An example of the code to do this is shown below.  /* TEXT_SetDec(Text Widget Handle, Value as Int, Length, Shift, Sign, Leading Spaces) */ if(TEXT_SetDec(textBoxSecs, (int)gSecs, 2, 0, 0, 0)) { /* Perform action here if necessary */ } if(TEXT_SetDec(textBoxMins, (int)gMins, 2, 0, 0, 0)) { /* Perform action here if necessary */ } ‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍ Method 2:  Animation Objects When implementing a real-time clock using animation objects, it is necessary to implement a loop.  This could be done outside of the AppWizard GUI (in your code) but because the timing precision can't be guaranteed, it's just as easy to implement a loop in the AppWizard GUI if you know how (it isn't very intuitive as to how to do this). Before examining the interactions to do this, let's look at the variables and objects needed to do this.  ID_VAR_SECS - This variable holds the current seconds value. ID_VAR_SECS_1 - This variable holds the next second value.  ID_TEXT_SECONDS - Text box that displays the current seconds value. ID_END_CNT - Variable that holds the value at which the seconds rolls over and increments the minute count ID_TEXT_MINS - Text box that holds the current minute count. ID_MIN_END_CNT - Variable that holds the value at which the minutes rolls over (which would also increment the hour count if the hours were implemented). ID_BUTTON_SECS - This is a hidden button that initiates actions when the seconds variable has reached the end count.  Now, here are the interactions used to implement the clock feature using animation interactions.  The heart of the loop are the interactions triggered by ID_VAR_SECS.  ID_VAR_SECS -> ID_VAR_SECS_1:  When ID_VAR_SECS changes, it needs to add one to ID_VAR_SECS_1 so that the animation will animate to one second from the current time. ID_VAR_SECS -> ID_TEXT_SECONDS:  When ID_VAR_SECS changes, it also needs to start the animation from the current value to the next second (ID_VAR_SECS_1). A very essential part of the loop is ensuring the animation restarts every time.  So ID_TEXT_SECONDS needs to change the value of ID_VAR_SECS when the animation ends. ID_VAR_SECS is changed to the current time value, ID_VAR_SECS_1. When the ID_TEXT_SECONDS animation ends, it must also decrement the ID_VAR_END_CNT variable.  This is analogous to the control variable of a "For" loop being updated. This is done using the ADDVALUE job, adding '-1' to the variable, ID_VAR_END_CNT. When ID_VAR_END_CNT changes, it updates the hidden button, ID_BUTTON_SECS, with the new value.  This is analogous to a "For" loop checking whether its control variable is still within its limits.   The interactions in group 5 are interactions that restart the loop when the seconds reach the count that we desire.  When the loop is restarted, the following actions must be taken: Set ID_VAR_SECS and ID_VAR_SECS_1 to the initial value for the next loop ('0' in this case).  Note that ID_VAR_SECS_1 MUST be set before ID_VAR_SECS.  Additionally, if the loop is to continue, ID_VAR_SECS and ID_VAR_SECS_1 must be set to the same value.   ID_TEXT_SECONDS is set to the initial value.  If this isn't done, then the text box will try to animate from the final value to the initial value and then will look "weird". ID_VAR_END_CNT is reset to its initial value (60 in this case).  ID_BUTTON_SECS is also responsible for updating the minutes values.  In this case, it's incrementing the ID_TEXT_MINS value (counting up in minutes) and decrementing the ID_VAR_MIN_END_CNT  Adjusting the time of an animation object The animation object (as well as other emWin objects) use the GUI_X_DELAY function for timing.  It is up to the host software to implement this function.  In the i.MX RT examples, the General Purpose Timer (GPT) is used for this timer.  So how the GPT is configured will affect the timing of the application and the how fast or slow the animations run. The GPT is configured in the function BOARD_InitGPT() which resides in the main source file.  The recommended way to adjust the speed of the timer is by changing the divider value to the GPT. Conclusion So we have seen two different methods of implementing a real-time clock in an AppWizard GUI application.  Those methods are: Use an independent timer in your MCU Using animation objects Using an independent timer in your MCU may be preferred as it allows for better control over the timing, can allow for real-time actions to be performed that AppWizard can't control, and provides some assurance of precision.  Using animation objects may be preferred if you just need a quick timer implementation that doesn't require you to manually add code to your project or use a second timer.  
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Overview of i.MX RT1050         The i.MX RT1050 is the industry's first crossover processor and combines the high-performance and high level of integration on an applications processors with the ease of use and real-time functionality of a micro-controller. The i.MX RT1050 runs on the Arm Cortex-M7 core at 600 MHz, it means that it definitely has the ability to do some complicated computing, such as floating-point arithmetic, matrix operation, etc. For general MCU, they're hard to conquer these complicated operations.         It has a rich peripheral which makes it suit for a variety of applications, in this demo, the PXP (Pixel Pipeline), CSI (CMOS Sensor Interface), eLCDIF (Enhanced LCD Interface) allows me to build up camera display system easily Fig 1 i.MX RT series           It has a rich peripheral which makes it suit for a variety of applications, in this demo, the PXP (Pixel Pipeline), CSI (CMOS Sensor Interface), eLCDIF (Enhanced LCD Interface) allows me to build up camera display system easily Fig 2 i.MX RT1050 Block Diagram Basic concept of Compute Vision (CV)          Machine Learning (ML) is moving to the edge because of a variety of reasons, such as bandwidth constraint, latency, reliability, security, ect. People want to have edge computing capability on embedded devices to provide more advanced services, like voice recognition for smart speakers and face detection for surveillance cameras. Fig 3 Reason        Convolutional Neural Networks (CNNs) is one of the main ways to do image recognition and image classification. CNNs use a variation of multilayer perception that requires minimal pre-processing, based on their shared-weights architecture and translation invariance characteristics. Fig 4 Structure of a typical deep neural network         Above is an example that shows the original image input on the left-hand side and how it progresses through each layer to calculate the probability on the right-hand side. Hardware MIMXRT1050 EVK Board; RK043FN02H-CT(LCD Panel) Fig 5 MIMXRT1050 EVK board Reference demo code emwin_temperature_control: demonstrates graphical widgets of the emWin library. cmsis_nn_cifar10: demonstrates a convolutional neural network (CNN) example with the use of convolution, ReLU activation, pooling and fully-connected functions from the CMSIS-NN software library. The CNN used in this example is based on the CIFAR-10 example from Caffe. The neural network consists of 3 convolution layers interspersed by ReLU activation and max-pooling layers, followed by a fully-connected layer at the end. The input to the network is a 32x32 pixel color image, which is classified into one of the 10 output classes. Note: Both of these two demo projects are from the SDK library Deploy the neuro network mode Fig 6 illustrates the steps of deploying the neuro network mode on the embedded platform. In the cmsis_nn_cifar10 demo project, it has provided the quantized parameters for the 3 convolution layer, so in this implementation, I use these parameters directly, BTW, I choose 100 images randomly from the Test set as a round of input to evaluate the accuracy of this model. And through several rounds of testing, I get the model's accuracy is about 65% as the below figure shows. Fig 6 Deploy the neuro network mode Fig 7 cmsis_nn_cifar10 demo project test result The CIFAR-10 dataset is a collection of images that are commonly used to train ML and computer vision algorithms, it consists of 60000 32x32 color images in 10 classes, with 6000 images per class ("airplane", "automobile", "bird", "cat", "deer", "dog", "frog", "horse", "ship", "truck"). There are 50000 training images and 10000 test images. Embedded platform software structure         After POR, various components are initialized, like system clock, pin mux, camera, CSI, PXP, LCD and emWin, etc. Then control GUI will show up in the LCD, press the Play button will display the camera video in the LCD, once an object into the camera's window, you can press the Capture button to pause the display and run the model to identify the object. Fig8 presents the software structure of this demo. Fig 8 Embedded platform software structure Object identify Test The three figures present the testing result.   Fig 9 Fig 10 Fig 11 Furture work          Use the Pytorch framework to train a better and more complicated convolutional network for object recognition usage.
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INTRODUCTION REQUIREMENTS INTEGRATION     1. INTRODUCTION   This document provides an step-by-step guide to migrate the webcam application explained on AN12103 "Developing a simple UVC device based on i.MX RT1050" to EVKB-MIMXRT1050. The goal is getting the application working on rev. B silicon, using the current SDK components (v2.4.2) and with MCUXpresso IDE (v10.2.1), because the original implementation from the application note is using rev. A silicon and is developed on IAR IDE.   2. REQUIREMENTS   A) Download and install MCUXpresso IDE v10.2.1. B) Build an MCUXpresso SDK v2.4.2 for EVKB-MIMXRT1050 from the "SDK Builder web page", ensuring that CSI and USB components are included, and MCUXpresso IDE is selected, and install it. For A) and B) steps, you could refer to the following Community document: https://community.nxp.com/docs/DOC-341985  C) Download the source code related to AN12103. D) Having the EVKB-MIMXRT1050 board, with MT9M1114 camera module. 3. INTEGRATION   a) Open MCUXpresso IDE, and click on "Import SDK example" shortcut, select the "evkbimxrt1050" board and click on "Next" button. b) Select the "driver_examples->csi->csi_rgb565" and "usb_examples->dev_video_virtual_camera_bm" examples, and click on "Finish" button. c) Copy the "fsl_csi.h", "fsl_csi.c", "fsl_lpi2c.h" and "fsl_lpi2c.c" files from the "drivers" folder of CSI project, to the "drivers" folder of the Virtual_Camera project. d) Copy the "pin_mux.h" and "pin_mux.c" files from the "board" folder of CSI project, to the "board->src" folder of the Virtual_Camera project, replacing the already included files. e) Copy the "camera" folder from AN12103 software package from the path below, to the Virtual_Camera project: <AN12103SW\boards\evkmimxrt1050\user_apps\uvc_demo\src\camera> Also copy the "main.c" file from AN12103 software package to the "sources" folder of the Virtual_Camera project. Ensure selecting the option "Copy files and folders" when copying folders/files. f) Right click on the recently added "camera" folder, and select "Properties". Then, on the "C/C++ Build" menu, remove the checkbox "Exclude resource from build" option, and then click on "Apply and Close" button. g) Right click on the Virtual_Camera project, and select "Properties". Then, select the "C/C++ Build -> Settings -> MCU C Compiler -> Preprocessor" menu, and click on the "+" button to add the following value: "SDK_I2C_BASED_COMPONENT_USED=1", and click on "OK" button. h) Now, move to the "Includes" menu of the same window, and click on the "+" button to add the following value: "../camera". Repeat the same procedure on "MCU Assembler -> General" menu, and then, click on "Apply and Close" button. i) Refer to "usb" folder from AN12103 software package from the path below, and copy "video_camera.h", "video_camera.c", "usb_device_descriptor.h" and "usb_device_descriptor.c" files to the "sources" folder of Virtual_Camera project, ensuring selecting the option "Copy files and folders" and overwriting the already included files: <AN12103SW\boards\evkmimxrt1050\user_apps\uvc_demo\src\usb> j) Select "video_data.h", "video_data.c", "virtual_camera.h" and "virtual_camera.c" files and "doc" folder, then right click and select "Delete". Click on "OK" button of the confirmation window to remove these resources from the Virtual_Camera project. k) Refer to "fsl_mt9m114.c" file from "camera" folder of Virtual_Camera project, and delete the "static" definition from functions "MT9M114_Init", "MT9M114_Deinit", "MT9M114_Start", "MT9M114_Stop", "MT9M114_Control" and "MT9M114_InitExt". l) Refer to "main.c" file from "sources" folder of Virtual_Camera project, and comment out the call to the function "BOARD_InitLPI2C1Pins". Also, refer to "board.c" file from "board->src" folder of Virtual_Camera project, and comment out the call to the function "SCB_EnableDCache". m) Refer to "camera_device.c" file from "camera" folder of Virtual_Camera project, and comment out the line "AT_NONCACHEABLE_SECTION_ALIGN(static uint16_t s_cameraFrameBuffer[CAMERA_FRAME_BUFFER_COUNT][CAMERA_VERTICAL_POINTS * CAMERA_HORIZONTAL_POINTS + 32u], FRAME_BUFFER_ALIGN);" and add the following line: static uint16_t __attribute__((section (".noinit.$BOARD_SDRAM"))) s_cameraFrameBuffer[CAMERA_FRAME_BUFFER_COUNT][CAMERA_VERTICAL_POINTS * CAMERA_HORIZONTAL_POINTS + 32u] __attribute__ ((aligned (FRAME_BUFFER_ALIGN))); n) Compile and download the application into the EVKB-MIMXRT1050 board. The memory usage is shown below: o) When running the application, if you also have the serial terminal connected, you should see the print message. Additionally, if connected to Windows OS, you could find it as "CSI Camera Device" under the "Imaging devices" category. p) Optionally, you could rename the Virtual_Camera project to any other desired name, with rigth click on Project, and selecting "Rename" option, and finally, click on "OK" button. It is also attached the migrated MCUXpresso IDE project including all the steps mentioned on the present document. Hope this will be useful for you. Best regards! Some additional references: https://community.nxp.com/thread/321587  Defining Variables at Absolute Addresses with gcc | MCU on Eclipse   
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[中文翻译版] 见附件   原文链接: https://community.nxp.com/docs/DOC-341317
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This document describes how to use I2S (Inter-IC Sound Bus) and DMA to record and playback audio using NXP's i.MX RT600 crossover MCUs. It also includes the process of how to use the codec chip to process audio data on the i.MX RT600 Evaluation Kit (EVK) based on the Cadence® Tensilica® HiFi4 Audio DSP. Click here to access the full application note.
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Introduction i.MX RT ROM bootloader provides a wealth of options to enable user programs to start in various ways. In some cases, people want to copy application image from Flash or other storage device to SDRAM and run there. In this article, I record three ways to realize this. Section 2 and 3 shows load image from NOR flash. Section 4 shows load image from SD card. Software and Tools: MCUXpresso IDE v11.1 NXP-MCUBootUtility 2.2.0   MIMXRT1060-EVK   RT1060 SDK v2.7.0   Win10   Add DCD by MCUxpresso IDE If customers use MCUXpresso to develop the project, they can add DCD head by MCUXpresso. To show the work flow, we take evkmimxrt1020_iled_blinky as the example. Step 1: Add the following to Compiler options: XIP_BOOT_HEADER_DCD_ENABLE=1 SKIP_SYSCLK_INIT Step 2: Modify the Memory Configuration Step 3: Select link application to RAM Step 4. Compile the project. MCUXpresso will generate linker script automatically. Step 5. Since the code should be linked to RAM, MCUXpresso will not prefix IVT and DCD. We can add these link information to linker script manually. Add below code to .ld file’s head.     .boot_hdr : ALIGN(4)     {         FILL(0xff)         __boot_hdr_start__ = ABSOLUTE(.) ;         KEEP(*(.boot_hdr.conf))         . = 0x1000 ;         KEEP(*(.boot_hdr.ivt))         . = 0x1020 ;         KEEP(*(.boot_hdr.boot_data))         . = 0x1030 ;         KEEP(*(.boot_hdr.dcd_data))         __boot_hdr_end__ = ABSOLUTE(.) ;         . = 0x2000 ;     } >BOARD_SDRAM   Then deselect “Manage linker script” in last screenshot. Step 6. Recompile the project, IVT/DCD/BOOT_DATA will be add to your project. Then right click the project axf file->Binary Utilities->Create S-record.   After all these step, you can open MCUBootUtility and download the .s19 file to NOR flash.   Add DCD by MCUBootUtility We can also keep the linker script managed by IDE. MCUBootUtility can add head too. Sometimes it is more flexible than other manners. Step 1. This time BOARD_SDRAM location should be changed to 0x80002000 while the size should be 0x1cff000. This is because the start 8k space in bootable image is saved for IVT and DCD. Step 2. compile the project and generate the .s19 file. Step 3. Open MCUBootUtility. In MCUBootUtility, we should first set the Device Configuration Data. Here I use MIMXRT1060_EVK. So I select the DCD bin file in NXP-MCUBootUtility-2.2.0\src\targets\MIMXRT1062. After that, select the application image file and click All-in-one Action button. MCUBootUtility can do all the work without any manual operation.   Boot from SD card to SDRAM In some application, customer don’t want XIP. They want to use SD card to keep application image and run the code in RAM. But if the code size is bigger than OCRAM size, they have to copy image into SDRAM when startup. With MCUBootUtility’s help, this work is very easy too.  User just need to change the memory map which is located to 0x80001000.   In MCUBootUtility, select the Boot Device to “uSDHC SD” and insert SD card. Then connect the target board. If RT1060 can read the SD card, it will display the SD card information. Then same as last section, set the DCD file and application image file. Click the All-in-One Action button, MCUBootUtility will generate the bootable image and write it to SD card.   SD card has huge capacity. It's too wasteful to only store boot image. People may ask that can they also create a FAT32 system and store more data file in it? Yes, but you need tool's help. When booting from SD card, ROM code read IVT and DCD from SD card address 0x400. To FAT32, the first 512 bytes in SD is for MBR(MAIN BOOT RECORD). Data in address 0x1c6 in MBR reords the partition start address. If the space from MBR to partition start address is big enough to store boot image, then FAT32 system and boot image can live in peace. .   Conclusions:      To help Boot ROM initialize SDRAM, DCD must be placed at right place and indexed by IVT correctly. When our code seems not work, we should first check IVT and DCD.          The IVT offset from the base address for each boot device type is defined in the table below. The location of the IVT is the only fixed requirement by the ROM. The remainder or the image memory map is flexible and is determined by the contents of the IVT.
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RT1050 HAB Encrypted Image Generation and Analysis 1, Introduction      The NXP RT series can support multiple boot modes, it incluses: unsigned image mode, HAB signed image mode, HAB encryption image mode, and BEE encryption  image mode.       In order to understand the specific structure of the HAB encryption app, this article will generate a non-XIP app image, then generate the relevant burning file through the elftosb.exe tool in the flashloader i.MX-RT1050, and use MFGTOOL to enter the serial download mode to download the .sb file.       This article will focus on the download steps of RT1050 HAB encryption related operations, and analyze the structure of the HAB encrypted app image.     2, RT1050 HAB Encypted Operation Procedure At first, we analyze the steps of MFGtool burning, which files are needed, so as to give specific preparation, open the ucl2.xml file in the following path of the flashloader: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\mfgtools-rel\Profiles\MXRT105X\OS Firmware Because we need to use the HAB encrypated boot mode, then we will use MXRT105X-SecureBoot, from the ucl2.xml file, we will find the following related code: Fig 1. MXRT1050-SecureBoot structure As you can see from the above, to implement the secure boot of RT1050, you need to prepare these three files: ivt_flashlloader_signed.bin: it is the signed flashloader binary file enable_hab.sb: it is used to modify the SRK and HABmode in the fuse map boot_image.sb: HAB encrypted app program file       Here is a flow chart of the overall HAB encryption operation step, after checking this figure, then we will follow it step by step.     Fig 2. MXRT1050 HAB encrypted image flow chart     The app image we used in this article is the RAM app, so, at first, we need to prepare one RAM based app image. In this document, we are directly use the prepared  RAM based app image: evkbimxrt1050_led_softwarereset_0xa000.s19, this app code function is: After download the code to the MIMXRT1050-EVKB(qspi flash) board, the on board led D18 will blinky and printf the information, after pressing the WAKEUP button SW8, the code will implement software reset and printf the related information. The unsigned code test print result are as follows:      BOARD RESET start.  Helloworld. WAKEUP key pressed, will do software system reset.    BOARD RESET start.  Helloworld. 2.1 CST tool preparation      Because the contains a lot of steps, then customer can refer to the following document do the related configuration, this document, we won’t give the CST configuration detail steps. Please check these documents: https://www.cnblogs.com/henjay724/p/10219459.html https://community.nxp.com/docs/DOC-340904 Security Application Note AN12079 After the CST tool configuration, please copy the cst.exe, crts folder, key folder from cst folder to the same folder that holds elftosb executable files: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\elftosb\win Please also copy SRK_1_2_3_4_fuse.bin and SRK_1_2_3_4_table.bin to the above folder. 2.2  Sign flashloader    Please refer to application note AN12079 chapter 3.3.1, copy flashloader.elf from folder path: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Flashloader And the imx-flexspinor-normal-signed.bd  from folder path: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\bd_file\imx10xx to the folder: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\elftosb\win Please open commander window under the elftosb folder, then input this commander: elftosb.exe -f imx -V -c imx-flexspinor-flashloader-signed.bd -o ivt_flashloader_signed.bin flashloader.elf   Fig 3.  Sign flashloader  This steps will generate the  ivt_flashlaoder_signed.bin, which is needed to put under the MFGtool OS Firmware folder, just used for enter the signed flashloader mode. 2.3 SRK and HAB mode fuse modification files Please refer to AN12079 chapter 4.3, copy the enable_hab.bd file from folder path: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\bd_file\imx10xx to this folder path: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\elftosb\win Please refer to the chapter 2.1 generated SRK_1_2_3_4_fuse.bin, modify the enable_hab.bd like the following picture: Fig 4. enable_hab.bd SRK and HAB mode fuse modification Then,  in the elftosb window, please input the following command, just used to generate the enable_hab.sb program file: elftosb.exe -f kinetis -V -c enable_hab.bd -o enable_hab.sb   Fig 5. SRK and HAB mode program files generation 2.4 APP Encrypted Image      If you want to do the HAB encrypted image download, you need to prepare one non-XIP app image, here we prepared one RAM based APP srec files.      Because the app file is the RAM files, then we also need the related RAM encrypted .bd files, please copy imx-itcm-encrypted.bd from the folder path:      Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\bd_file\imx10xx to this folder path: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\elftosb\win Open imx-itcm-encrypted.bd, then modify the following content: options {     flags = 0x0c;     # Note: This is an example address, it can be any non-zero address in ITCM region     startAddress = 0x8000;     ivtOffset = 0x1000;     initialLoadSize = 0x2000;     # Note: This is required if the cst and elftsb are not in the same folder     # Note: This is required if the default entrypoint is not the Reset_Handler     #       Please set the entryPointAddress to Reset_Handler address   entryPointAddress = 0x0000a2dd; } Here, we need to note these two points: (1)    ivtOffset = 0x1000; If the external flash is flexspi flash, then we need to modify ivtOffset as 0X1000, if it is the nandflash, we need to use the 0X400. (2) entryPointAddress = 0x0000a2dd; The entryPointsAddress should be the app code reset handlder, it is the app start address+4 data, the entry address is also OK, but we suggest you to use the app Reset_Handler address. Fig 6. App reset handler address Then input the following commander in the elftosb windows: elftosb.exe -f imx -V -c imx-itcm-encrypted.bd -o ivt_evkbimxrt1050_led_softwarereset_0xa000_encrypted.bin evkbimxrt1050_led_softwarereset_0xa000.s19 Fig 7. App HAB Encrypted file generation Please note, we need to record the generated key blob offset address, it is 0XA00, just like the above data in the red frame, this address will be used in the next chapter’s .bd file. After this step, it will generate 7 files:          (1)  ivt_evkbimxrt1050_led_softwarereset_0xa000_encrypted.bin, this file includes the FDCB which is filled with 0, IVT, BD, DCD, APP HAB encrypted image data, CSF data (2)  ivt_evkbimxrt1050_led_softwarereset_0xa000_encrypted_nopadding.bin, compare with ivt_evkbimxrt1050_led_softwarereset_0xa000_encrypted.bin, this file deletes the 0s which is above IVT range. (3)  Csf.bin, it is the HAB data area, you can find the data contains the csf data, it is from 0X8000 to 0X8F80 in the generated ivt_evkbimxrt1050_led_softwarereset_0xa000_encrypted.bin. Fig 8. Csf data and the encrypted app relationship      (4) dek.bin Fig 9. Dek data DEK data is the AES-128 bits key, it is not defined by the customer, it is random generated automatically by the HAB encrypted tool. (5) input.csf Open it, you can find the following content: Fig10. Input csf file content (6) rawbytes.bin,  this is the app image plaintext data, it doesn’t contains the FDCB,IVT,BOOTDATA, DCD, csf etc.    (7) temp.bin, it is the temporary file, compare with ivt_evkbimxrt1050_led_softwarereset_0xa000_encrypted.bin, no csf files.   2.5 HAB Encrypted QSPI program file    Here we need to prepare one program_flexspinor_image_qspinor_keyblob.bd file, and put it under the same folder as elftosb, this file is used to generate the HAB encrypted program .sb file. Because the flashloader package didn’t contains it, then we paste all the related content, and I will also attach it in the attachment. # The source block assign file name to identifiers sources { myBinFile = extern (0); dekFile = extern (1); } constants { kAbsAddr_Start= 0x60000000; kAbsAddr_Ivt = 0x60001000; kAbsAddr_App = 0x60002000; } # The section block specifies the sequence of boot commands to be written to the SB file section (0) { #1. Prepare Flash option # 0xc0000006 is the tag for Serial NOR parameter selection # bit [31:28] Tag fixed to 0x0C # bit [27:24] Option size fixed to 0 # bit [23:20] Flash type option # 0 - QuadSPI SDR NOR # 1 - QUadSPI DDR NOR # 2 - HyperFLASH 1V8 # 3 - HyperFLASH 3V # 4 - Macronix Octal DDR # 6 - Micron Octal DDR # 8 - Adesto EcoXIP DDR # bit [19:16] Query pads (Pads used for query Flash Parameters) # 0 - 1 # 2 - 4 # 3 - 8 # bit [15:12] CMD pads (Pads used for query Flash Parameters) # 0 - 1 # 2 - 4 # 3 - 8 # bit [11: 08] Quad Mode Entry Setting # 0 - Not Configured, apply to devices: # - With Quad Mode enabled by default or # - Compliant with JESD216A/B or later revision # 1 - Set bit 6 in Status Register 1 # 2 - Set bit 1 in Status Register 2 # 3 - Set bit 7 in Status Register 2 # 4 - Set bit 1 in Status Register 2 by 0x31 command # bit [07: 04] Misc. control field # 3 - Data Order swapped, used for Macronix OctaFLASH devcies only (except MX25UM51345G) # 4 - Second QSPI NOR Pinmux # bit [03: 00] Flash Frequency, device specific load 0xc0000006 > 0x2000; # Configure QSPI NOR FLASH using option a address 0x2000 enable flexspinor 0x2000; #2 Erase flash as needed. erase 0x60000000..0x60020000; #3. Program config block # 0xf000000f is the tag to notify Flashloader to program FlexSPI NOR config block to the start of device load 0xf000000f > 0x3000; # Notify Flashloader to response the option at address 0x3000 enable flexspinor 0x3000; #5. Program image load myBinFile > kAbsAddr_Ivt; #6. Generate KeyBlob and program it to flexspinor # Load DEK to RAM load dekFile > 0x10100; # Construct KeyBlob Option #--------------------------------------------------------------------------- # bit [31:28] tag, fixed to 0x0b # bit [27:24] type, 0 - Update KeyBlob context, 1 Program Keyblob to flexspinor # bit [23:20] keyblob option block size, must equal to 3 if type =0, # reserved if type = 1 # bit [19:08] Reserved # bit [07:04] DEK size, 0-128bit 1-192bit 2-256 bit, only applicable if type=0 # bit [03:00] Firmware Index, only applicable if type = 1 # if type = 0, next words indicate the address that holds dek # the 3rd word #---------------------------------------------------------------------------- # tag = 0x0b, type=0, block size=3, DEK size=128bit load 0xb0300000 > 0x10200; # dek address = 0x10100 load 0x00010100 > 0x10204; # keyblob offset in boot image # Note: this is only an example bd file, the value must be replaced with actual # value in users project load 0x0000a000 > 0x10208; enable flexspinor 0x10200; #7. Program KeyBlob to firmware0 region load 0xb1000000 > 0x10300; enable flexspinor 0x10300; }‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍‍ Please note, in the above chapter, fig 7, we mentioned the keyblob offset address, we need to modify it in the following code:     load 0x0000a000 > 0x10208; Now, combine program_flexspinor_image_qspinor_keyblob.bd, ivt_evkbimxrt1050_led_softwarereset_0xa000_encrypted_nopadding.bin and dek.bin file together, we use the following commander to generate the boot_image.sb: elftosb.exe -f kinetis -V -c program_flexspinor_image_qspinor_keyblob.bd -o boot_image.sb ivt_evkbimxrt1050_led_softwarereset_0xa000_encrypted_nopadding.bin dek.bin Fig 11. App HAB encrypted program file generation Until now, we will find, all the related HAB encrypted files is prepared. 2.6 MFG Tool program HAB Encrypted files to RT1050-EVKB        Before we program it, please copy the following 3 files which is in the elftosb folder: ivt_flashloader_signed.bin enable_hab.sb boot_image.sb to this folder: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\mfgtools-rel\Profiles\MXRT105X\OS Firmware Please modify cfg.ini, the file path is: Flashloader_i.MXRT1050_GA\Flashloader_RT1050_1.1\Tools\mfgtools-rel Modify the content as: [profiles] chip = MXRT105X [platform] board = [LIST] name = MXRT105X-SecureBoot Choose MXRT105X-SecureBoot program mode. Then open the tool MfgTool2.exe, the board MIMXRT1050-EVKB(need to modify the on board resistor, use the qspi flash) mode should be serial download mode, just modify SW7:1-OFF,2-OFF,3-OFF, 4-ON, connect two usb cable between PC and the board J28 and J9. After the connection, you will find the MfgTool2.exe can detect the HID device: Fig 12. MFG tool program After the program is finished, power off the board, modify the boot mode to internal boot, it is SW7:1-OFF,2-OFF,3-ON, 4-OFF,connect the COM terminal, power on the EVKB board, after reset, you will find the D18 led is blinking, after you press the SW8, you will find the following printf information: BOARD RESET start. Helloworld. WAKEUP key pressed, will do software system reset. ? BOARD RESET start. Helloworld.‍‍‍‍‍‍‍‍‍‍‍‍‍ So, the HAB encrypted image works OK now. 3. App HAB encrypted image structure analysis 3.1 MCUBootUtility Configuration to check the RT Encrypted image      Here, we can also use  MCUBootUtility tool to check the RT chip encrypted image and the fuse data.      If the cst is your own configured, please do the following configuration at first:     (1)Copy the configured cst folder to folder: NXP-MCUBootUtility-2.0.0\tools Delete the original cst folder. (2)Copy SRK_1_2_3_4_fuse.bin and SRK_1_2_3_4_table.bin to folder:  NXP-MCUBootUtility-2.0.0\gen\hab_cert Now, you can use the new MCUBootutility to connect your board which already done the HAB encrypted method. 3.1 RT1050 fuse map comparation Before do the HAB encrypted image program, I have read out the whole fuse map as follows: Fig 13. MIMXRT1050-EVKB fuse map before HAB encrypted image Fig 14. MIMXRT1050-EVKB fuse map after HAB encrypted image Compare the fuse map between do the HAB encrypted image and no HAB encrypted image, we can find two difference: HAB mode, 0X460 bit1:0 open, 1 close SRK area We can find, after program the HAB encrypted image, the SRK fuse data is the same as the SRK data which is defined in the enable_hab.bd. 3.2  Readout HAB encrypted QSPI APP image structure analysis From MCUBootUtility tool, we can find the HAB Encypted image structure should be like this: Fig 15. HAB Encrypted image structure What about the real example image case? Now, we use the MCUbootUtility tool to read out our HAB encrypted image, from address 0X60000000, the readout size is 0XB000. The detail image structure is like following:   Fig 16. HAB Encypted image example structure   1): IVT:  hdr,  IVT header, more details, check hab_hdr 2):    IVT: entry, the app entrypointAddress, it should be the reset_handler address, in this document example, it is the address 0xa004 data, the plaintext is 0X00A2DD, but after the HAB encrypted, we can find the address -x60002004 data is the encrypted data 3):  IVT: reserved 4):  IVT: DCD, it is used for the DRAM SEMC configuration, in this example, we didn’t use the SDDRAM, so the data is 0. 5):  IVT: BOOT_DATA, used to indicate the BOOT_DATA  RAM start address 0X9020. 6):  IVT: self, ivt self RAM start address is 0X9000 7):  IVT:CSF, it is used to indicate the CST start address, this example csf ram address is 0X00010000. 8):  IVT:reserved 9): BOOT_DATA:  RAM image start,  the whole image RAM start address, this RAM example BOOT_DATA is 0X8000,0XA000-0X2000=0X8000 10): BOOT_DATA: size, APP file size, it is 0X0000A200, after checking the file generated HAB encrypted app image size, you can find the image end size is really 0XA200, just like the fig 16. 11):  HAB  Encypted app data,  please check ivt_evkbimxrt1050_led_softwarereset_0xa000_encrypted.bin file, the address 0X2000-0X7250 data, you will find it is the same.   12): HAB data, it incluses the csf, certificate etc data, you can compare the file ivt_evkbimxrt1050_led_softwarereset_0xa000_encrypted.bin address 0X8000-0x8f70 data, it is the same. 13):DEK blob, it is the DEK key blob related data, the offset address is 0XA000, the same as fig 7. FDCB,IVT,BOOT DATA are all plaintext, but app image area is the HAB encrypted data, HAB and the DEK blob is the generated data put in the related memory. Conclusion     This document we mainly use the elftosb and the MFGTool to generate the HAB encrypted image, and download it to the RT1050 EVKB board, document give the whole detail steps, and us ethe MCUBootutility tool to read out the HAB encrypted image, and analysis the HAB encrypted image structure with the examples.  After compare with the generated mid files, we can find all the data is consist, and all the encrypted data range is the same. The test result also demonstrate the HAB encrypted code function works, the HAB encrypted boot has no problems. All the related files is in the attachment.      
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