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Why Shape Coding? Asymptotic Analysis of the Entropy Rate for Digital Images

11 April 2022
Gangtao Xin
Pingyi Fan
Khaled B. Letaief
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Abstract

This paper focuses on the ultimate limit theory of image compression. It proves that for an image source, there exists a coding method with shapes that can achieve the entropy rate under a certain condition where the shape-pixel ratio in the encoder/decoder is O(1log⁡t)O({1 \over {\log t}})O(logt1​). Based on the new finding, an image coding framework with shapes is proposed and proved to be asymptotically optimal for stationary and ergodic processes. Moreover, the condition O(1log⁡t)O({1 \over {\log t}})O(logt1​) of shape-pixel ratio in the encoder/decoder has been confirmed in the image database MNIST, which illustrates the soft compression with shape coding is a near-optimal scheme for lossless compression of images.

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