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Utilizing repeated adjacencies of vector quantization indices in image compression

机译:在图像压缩中利用向量量化索引的重复邻接

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Image compression using vector quantization (VQ) results in highly correlated indices. The correlation between these indices is used to reduce the bits needed to represent them. This is done by many index compression algorithms such as the Hu and Chang, search order coding (SOC), and switching tree coding (STC). A new algorithm for VQ index compression is introduced and it utilizes the local statistics of each image and the repeating pattern of its adjacent indices. The proposed algorithm improves the index compression performance of the basic VQ, with a relatively slight increase of complexity.
机译:使用矢量量化(VQ)进行图像压缩会产生高度相关的索引。这些索引之间的相关性用于减少表示它们所需的位。这可以通过许多索引压缩算法来完成,例如Hu和Chang,搜索顺序编码(SOC)和交换树编码(STC)。引入了一种新的VQ索引压缩算法,该算法利用了每个图像的局部统计信息及其相邻索引的重复模式。所提出的算法提高了基本VQ的索引压缩性能,而复杂度却相对增加了一点。

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