2395167_en-US

cancel
Showing results for 
Show  only  | Search instead for 
Did you mean: 

2395167_en-US

2395167_en-US

lowlight opensource ai-isp test on imx95

  There are many open-source low-light AI-ISP models. The table below is a comparison table provided by Copilot. 


Algorithm

GitHub

Type

i.MX95 NPU Suitability


MSR (Retinex)

jsrsinchana/.../MSR-algorithm

Non-AI (ISP)

Medium


Zero-DCE++

arnabroy734/low_light_enhancement

Lightweight CNN + Curve

Very High


RetinexNet

weichen582/RetinexNet

CNN (Retinex)

Medium


EnlightenGAN

VITA-Group/EnlightenGAN

GAN (CNN)

Very High (lite)


FLOL

cidautai/FLOL

Lightweight CNN

High


SNR-aware

JIA-Lab-research/SNR-Aware

Transformer + CNN

Low


KinD

zhangyhuaee/KinD

Retinex + CNN

Medium


RetinexNet-lite

Derived

Light CNN

Medium


EnlightenGAN-lite

Derived

Small CNN

Very High


Fast LLIE CNN

Various

Small CNN

High



Tested above open-source models with UVC to perform performance evaluation on the exip-os08a20 module with linear mode. Found that SCI(GitHub - vis-opt-group/SCI: [CVPR 2022] This is the official code for the paper "Toward Fast, Flexib...) computation is relatively small, low-light performance is good in subjective evaluations, and it can basically run on the IMX95. The testing method involves copying the tflite file and test script to the /root/ directory of the IMX95 and running the following command: `python3 test_sci_cvpr_illu_imx95_int8.py --model sci_tpami_illu_imx95_int8.tflite`. The comparison interface shown below is displayed.

weiping_liu_0-1784087656398.png



i.MX ProcessorsSensor
Tags (1)
No ratings
Version history
Last update:
Tuesday
Updated by: