Vector quantization fast search algorithm using hyperplane based k-dimensional multi-node search tree

Kam-Fai Chan Alton, Kam-Tim Woo, C. Kok
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引用次数: 1

Abstract

A vector quantization fast search algorithm using a hyperplane based k-dimensional multi-node search tree is presented. The misclassification problem associated with hyperplane decision is eliminated by a multi-level backtracking algorithm. The vector quantization complexity is further lowered by a novel relative distance quantization rule. Triangular inequality is applied to lower bound the search distance, thus eliminating all the sub-trees in the k-dimensional search tree during backtracking. Vector quantization image coding results are presented which show the proposed vector quantization algorithm outperforms other vector quantization algorithms in the literature both in PSNR and computation time.
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基于超平面的k维多节点搜索树矢量量化快速搜索算法
提出了一种基于超平面的k维多节点搜索树的矢量量化快速搜索算法。采用多级回溯算法消除了超平面决策中的误分类问题。新的相对距离量化规则进一步降低了矢量量化的复杂度。将三角不等式应用于搜索距离的下界,从而在回溯过程中消除k维搜索树中的所有子树。矢量量化图像编码结果表明,本文提出的矢量量化算法在PSNR和计算时间上都优于文献中其他矢量量化算法。
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