改进了匹配纹理编码的侧匹配

Guoxin Jin, T. Pappas, D. Neuhoff
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引用次数: 1

摘要

匹配纹理编码(MTC)利用自然图像中纹理区域的冗余,实现低编码率的结构无损压缩。MTC识别大图像块的关键元素,这些大图像块可以被具有相似结构的先前编码块替换。侧匹配(SM)方法通过将目标块的上下边界(侧)与候选块的相应边界进行匹配,然后在最佳侧匹配中选择与目标块最匹配的侧匹配来尝试做到这一点。为了增加匹配的数量和质量,降低计算复杂度,我们探索了三个SM标准的有效性和相互作用。标准是均方误差、对数方差比和最近提出的结构纹理相似性度量标准STSIM-2的部分实现。我们提出了一种用于侧匹配的分层算法,其中三层利用三个度量,从而提高了性能并降低了计算复杂度。为了设置分层算法的第一层和第二层的阈值,我们依赖于贝叶斯假设检验。为了估计必要的局部概率密度,我们引入了一种依赖于侧匹配搜索区域的自适应估计技术。实验结果表明,在给定的编码速率下,与以前的MTC实现相比,质量有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved side matching for matched-texture coding
Matched-texture coding (MTC) exploits the redundancy of textured regions in natural images in order to achieve low-encoding-rate structurally lossless compression. A key element of MTC identifying large image blocks that can be replaced with previously encoded blocks that have similar structure. The side matching (SM) approach attempts to do this by matching the upper and left boundary (side) of a target block with the corresponding boundary of the candidate block, and then, among the best side matches, selecting the one that best matches the target block. We explore the effectiveness of, and interplay between, three SM criteria in order to increase the number and quality of matches and to reduce the computational complexity. The criteria are mean-squared-error, log variance ratio, and partial implementations of STSIM-2, a recently proposed structural texture similarity metric. We propose a hierarchical algorithm for side matching, with three layers that utilize the three metrics, that improves performance and reduces the computation complexity. To set thresholds for the first and second layers of the hierarchical algorithm, we rely on Bayesian hypothesis testing. To estimate the necessary local probability densities, we introduce an adaptive estimation technique that depends on the side matching search region. Experimental results demonstrate an improvement of quality for a given encoding rate over previous realizations of MTC.
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