CompressAI: a PyTorch library and evaluation platform for end-to-end compression research
About
This paper presents CompressAI, a platform that provides custom operations, layers, models and tools to research, develop and evaluate end-to-end image and video compression codecs. In particular, CompressAI includes pre-trained models and evaluation tools to compare learned methods with traditional codecs. Multiple models from the state-of-the-art on learned end-to-end compression have thus been reimplemented in PyTorch and trained from scratch. We also report objective comparison results using PSNR and MS-SSIM metrics vs. bit-rate, using the Kodak image dataset as test set. Although this framework currently implements models for still-picture compression, it is intended to be soon extended to the video compression domain.
Jean B\'egaint, Fabien Racap\'e, Simon Feltman, Akshay Pushparaja• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Compression | Kodak | BD-Rate (PSNR)0.00e+0 | 50 | |
| Image Compression | Tecnick | BD-Rate (PSNR)0.00e+0 | 36 | |
| Image Compression | Kodak (test) | -- | 32 | |
| Image Compression | CLIC | BD-Rate (PSNR)0.00e+0 | 16 | |
| Image Compression | CLIC (test) | -- | 8 | |
| Image Compression | Tecnick original (test) | BD-Rate (MS-SSIM)0.00e+0 | 7 |
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