Bit-plane compressive sensing with Bayesian decoding for lossy compression

Sz-Hsien Wu, Wen-Hsiao Peng, Tihao Chiang
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引用次数: 5

Abstract

This paper addresses the problem of reconstructing a com-pressively sampled sparse signal from its lossy and possibly insufficient measurements. The process involves estimations of sparsity pattern and sparse representation, for which we derived a vector estimator based on the Maximum a Posteriori Probability (MAP) rule. By making full use of signal prior knowledge, our scheme can use a measurement number close to sparsity to achieve perfect reconstruction. It also shows a much lower error probability of sparsity pattern than prior work, given insufficient measurements. To better recover the most significant part of the sparse representation, we further introduce the notion of bit-plane separation. When applied to image compression, the technique in combination with our MAP estimator shows promising results as compared to JPEG: the difference in compression ratio is seen to be within a factor of two, given the same decoded quality.
有损压缩的位平面压缩感知与贝叶斯解码
本文解决了从有损和可能不充分的测量中重建压缩采样稀疏信号的问题。该过程涉及稀疏模式和稀疏表示的估计,为此我们推导了一个基于最大后验概率(MAP)规则的向量估计器。通过充分利用信号先验知识,我们的方案可以使用接近稀疏度的测量数来实现完美的重构。在测量不充分的情况下,它还显示出稀疏模式的错误概率比以前的工作低得多。为了更好地恢复稀疏表示的最重要部分,我们进一步引入了位平面分离的概念。当应用于图像压缩时,与我们的MAP估计器相结合的技术显示出与JPEG相比有希望的结果:在给定相同的解码质量的情况下,压缩比的差异被认为在两倍之内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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