Nearly optimal vector quantization via linear programming

Jyh-Han Lin, J. Vitter
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引用次数: 8

Abstract

The authors present new vector quantization algorithms. The new approach is to formulate a vector quantization problem as a 0-1 integer linear program. They first solve its relaxed linear program by linear programming techniques. Then they transform the linear program solution into a provably good solution for the vector quantization problem. These methods lead to the first known polynomial-time full-search vector quantization codebook design algorithm and tree pruning algorithm with provable worst-case performance guarantees. They also introduce the notion of pseudorandom pruned tree-structured vector quantizers. Initial experimental results on image compression are very encouraging.<>
近最优矢量量化通过线性规划
作者提出了新的矢量量化算法。新的方法是将矢量量化问题表述为0-1整数线性规划。首先利用线性规划技术求解其松弛线性规划。然后,他们将线性规划解转化为矢量量化问题的可证明的好解。这些方法导致了已知的第一个多项式时间全搜索矢量量化码本设计算法和具有可证明的最坏情况性能保证的树修剪算法。他们还引入了伪随机修剪树结构矢量量化器的概念。在图像压缩方面的初步实验结果令人鼓舞。
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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