A novel search algorithm based on L/sub 2/-norm pyramid of codewords for fast vector quantization encoding

B. Song, J. Ra
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引用次数: 2

Abstract

Vector quantization for image compression requires expensive encoding time to find the closest codeword to the input vector. This paper presents a fast algorithm to speed up the closest codeword search process in vector quantization encoding. By using an appropriate topological structure of the codebook, we first derive a condition to eliminate unnecessary matching operations from the search procedure. Then, based on this elimination condition, a fast search algorithm is suggested. Simulation results show that with little preprocessing and memory cost, the proposed search algorithm significantly reduces the encoding complexity while maintaining the same encoding quality as that of the full search algorithm. It is also found that the proposed algorithm outperforms the existing search algorithms.
一种基于码字L/sub - 2/-范数金字塔的快速矢量量化编码搜索算法
用于图像压缩的矢量量化需要花费大量的编码时间来找到最接近输入矢量的码字。本文提出了一种加快矢量量化编码中最接近码字搜索过程的快速算法。通过使用合适的码本拓扑结构,我们首先推导出一个条件,以消除搜索过程中不必要的匹配操作。在此基础上,提出了一种快速搜索算法。仿真结果表明,该搜索算法在保持与全搜索算法相同的编码质量的同时,以较少的预处理和内存开销显著降低了编码复杂度。结果表明,该算法优于现有的搜索算法。
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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