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Versatile-Image-Compression

NOTE: A new pytorch implementation of iWave++ has been released at (https://gitlab.com/iWave/iwave), including training and testing code, and pre-trained models. This pytorch implementation is also used as the reference software for IEEE 1857.11 Standard for Neural Network-Based Image Coding.

This repo provides the official implementation of "End-to-End Optimized Versatile Image Compression With Wavelet-Like Transform".

Accepted by IEEE TPAMI.

Author: Haichuan Ma, Dong Liu, Ning Yan, Houqiang Li, Feng Wu

BibTeX

@article{ma2020end, title={End-to-End Optimized Versatile Image Compression With Wavelet-Like Transform}, author={Ma, Haichuan and Liu, Dong and Yan, Ning and Li, Houqiang and Wu, Feng}, journal={IEEE Transactions on Pattern Analysis and Machine Intelligence}, year={2020}, publisher={IEEE} }

Update Notes

2022.10.28 iWave++ has been accepted as one of the three reference softwares for IEEE 1857.11 Standard for Neural Network-Based Image Coding. Pytorch code (including both training and testing code) and pre-trained models can be found at (https://gitlab.com/iWave/iwave). To further improve compression performance, a series of improvements (such as an enhanced context model and an enhanced de-quant model) have been introduced in the new pytorch implementation compared to the original tensorflow version.

2020.9.4 Upload code and models of Lossy multi-model iWave++.

2020.8.26 Init this repo.

How To Test

  1. Dependencies. We test with MIT deepo docker image.

  2. Clone this github repo.

  3. Place Test images. (The code now only supports images whose border length is a multiple of 16. However, it is very simple to support arbitrary boundary lengths by padding.)

  4. Download models. See model folder.

  5. python main_testRGB.py. (The path in main_testRGB.py needs to be modified. Please refer to the code.)

Results

iWave++ outperforms Joint, Variational, and iWave. For more information, please refer to the paper.

  1. RGB PSNR on Kodak dataset.

image

  1. RGB PSNR on Tecnick dataset.

image