Channel-wise Autoregressive Entropy Models for Learned Image Compression
About
In learning-based approaches to image compression, codecs are developed by optimizing a computational model to minimize a rate-distortion objective. Currently, the most effective learned image codecs take the form of an entropy-constrained autoencoder with an entropy model that uses both forward and backward adaptation. Forward adaptation makes use of side information and can be efficiently integrated into a deep neural network. In contrast, backward adaptation typically makes predictions based on the causal context of each symbol, which requires serial processing that prevents efficient GPU / TPU utilization. We introduce two enhancements, channel-conditioning and latent residual prediction, that lead to network architectures with better rate-distortion performance than existing context-adaptive models while minimizing serial processing. Empirically, we see an average rate savings of 6.7% on the Kodak image set and 11.4% on the Tecnick image set compared to a context-adaptive baseline model. At low bit rates, where the improvements are most effective, our model saves up to 18% over the baseline and outperforms hand-engineered codecs like BPG by up to 25%.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Compression | Kodak | BD-Rate (PSNR)-3.23 | 50 | |
| Image Compression | Tecnick | BD-Rate (PSNR)-0.88 | 36 | |
| Image Compression | Kodak (test) | BD-Rate1.11 | 32 | |
| Image Compression | Kodak | Encoding Time (s)0.2467 | 20 | |
| Image Compression | Tecnick original (test) | BD-Rate (MS-SSIM)-43.24 | 7 |