Learned Lossless JPEG Transcoding via Joint Lossy and Residual Compression

08/24/2022
by   Xiaoshuai Fan, et al.
0

As a commonly-used image compression format, JPEG has been broadly applied in the transmission and storage of images. To further reduce the compression cost while maintaining the quality of JPEG images, lossless transcoding technology has been proposed to recompress the compressed JPEG image in the DCT domain. Previous works, on the other hand, typically reduce the redundancy of DCT coefficients and optimize the probability prediction of entropy coding in a hand-crafted manner that lacks generalization ability and flexibility. To tackle the above challenge, we propose the learned lossless JPEG transcoding framework via Joint Lossy and Residual Compression. Instead of directly optimizing the entropy estimation, we focus on the redundancy that exists in the DCT coefficients. To the best of our knowledge, we are the first to utilize the learned end-to-end lossy transform coding to reduce the redundancy of DCT coefficients in a compact representational domain. We also introduce residual compression for lossless transcoding, which adaptively learns the distribution of residual DCT coefficients before compressing them using context-based entropy coding. Our proposed transcoding architecture shows significant superiority in the compression of JPEG images thanks to the collaboration of learned lossy transform coding and residual entropy coding. Extensive experiments on multiple datasets have demonstrated that our proposed framework can achieve about 21.49 which outperforms the typical lossless transcoding framework JPEG-XL by 3.51

READ FULL TEXT

page 1

page 2

research
03/05/2023

Learned Lossless Compression for JPEG via Frequency-Domain Prediction

JPEG images can be further compressed to enhance the storage and transmi...
research
03/23/2020

Learning Better Lossless Compression Using Lossy Compression

We leverage the powerful lossy image compression algorithm BPG to build ...
research
07/05/2022

Image Coding for Machines with Omnipotent Feature Learning

Image Coding for Machines (ICM) aims to compress images for AI tasks ana...
research
06/05/2020

Can the Multi-Incoming Smart Meter Compressed Streams be Re-Compressed?

Smart meters have currently attracted attention because of their high ef...
research
12/07/2022

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

This paper explores learned image compression based on traditional and l...
research
12/17/2020

Learned Block-based Hybrid Image Compression

Learned image compression based on neural networks have made huge progre...
research
03/31/2021

Learning Scalable ℓ_∞-constrained Near-lossless Image Compression via Joint Lossy Image and Residual Compression

We propose a novel joint lossy image and residual compression framework ...

Please sign up or login with your details

Forgot password? Click here to reset