Learned Lossless Compression for JPEG via Frequency-Domain Prediction
- URL: http://arxiv.org/abs/2303.02666v1
- Date: Sun, 5 Mar 2023 13:15:28 GMT
- Title: Learned Lossless Compression for JPEG via Frequency-Domain Prediction
- Authors: Jixiang Luo, Shaohui Li, Wenrui Dai, Chenglin Li, Junni Zou, Hongkai
Xiong
- Abstract summary: We propose a novel framework for learned lossless compression of JPEG images.
To enable learning in the frequency domain, DCT coefficients are partitioned into groups to utilize implicit local redundancy.
An autoencoder-like architecture is designed based on the weight-shared blocks to realize entropy modeling of grouped DCT coefficients.
- Score: 50.20577108662153
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: JPEG images can be further compressed to enhance the storage and transmission
of large-scale image datasets. Existing learned lossless compressors for RGB
images cannot be well transferred to JPEG images due to the distinguishing
distribution of DCT coefficients and raw pixels. In this paper, we propose a
novel framework for learned lossless compression of JPEG images that achieves
end-to-end optimized prediction of the distribution of decoded DCT
coefficients. To enable learning in the frequency domain, DCT coefficients are
partitioned into groups to utilize implicit local redundancy. An
autoencoder-like architecture is designed based on the weight-shared blocks to
realize entropy modeling of grouped DCT coefficients and independently compress
the priors. We attempt to realize learned lossless compression of JPEG images
in the frequency domain. Experimental results demonstrate that the proposed
framework achieves superior or comparable performance in comparison to most
recent lossless compressors with handcrafted context modeling for JPEG images.
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