English

Image Compression With Learned Lifting-Based DWT and Learned Tree-Based Entropy Models

Image and Video Processing 2022-12-08 v1 Multimedia

Abstract

This paper explores learned image compression based on traditional and learned discrete wavelet transform (DWT) architectures and learned entropy models for coding DWT subband coefficients. A learned DWT is obtained through the lifting scheme with learned nonlinear predict and update filters. Several learned entropy models are proposed to exploit inter and intra-DWT subband coefficient dependencies, akin to traditional EZW, SPIHT, or EBCOT algorithms. Experimental results show that when the proposed learned entropy models are combined with traditional wavelet filters, such as the CDF 9/7 filters, compression performance that far exceeds that of JPEG2000 can be achieved. When the learned entropy models are combined with the learned DWT, compression performance increases further. The computations in the learned DWT and all entropy models, except one, can be simply parallelized, and the systems provide practical encoding and decoding times on GPUs.

Keywords

Cite

@article{arxiv.2212.03616,
  title  = {Image Compression With Learned Lifting-Based DWT and Learned Tree-Based Entropy Models},
  author = {Ugur Berk Sahin and Fatih Kamisli},
  journal= {arXiv preprint arXiv:2212.03616},
  year   = {2022}
}

Comments

11 pages, 17 figures

R2 v1 2026-06-28T07:24:41.687Z