Row-Centric Lossless Compression of Markov Images

2017 IEEE INTERNATIONAL SYMPOSIUM ON INFORMATION THEORY (ISIT)(2017)

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摘要
Motivated by the question of whether the recently introduced Reduced Cutset Coding (RCC) offers rate-complexity performance benefits over conventional context-based conditional coding for sources with two-dimensional Markov structure, this paper compares several row-centric coding strategies that vary in the amount of conditioning as well as whether a model or an empirical table is used in the encoding of blocks of rows. The conclusion is that, at least for sources exhibiting low-order correlations, 1-sided model-based conditional coding is superior to the method of RCC for a given constraint on complexity, and conventional context-based conditional coding is nearly as good as the 1-sided model-based coding.
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关键词
row-centric lossless compression,Markov images,reduced cutset coding,RCC,rate-complexity performance,conventional context-based conditional lossless coding,two-dimensional Markov structure,row-centric coding strategies,block encoding,low-order correlations,1-sided model-based conditional coding
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