Planar-oriented ripple based greedy search algorithm for vector quantization

Yeou-Jiunn Chen, T. Haung
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Abstract

Vector quantization techniques have been used in various applications. The efficiency of search algorithm is very important for vector quantization. In this paper, a planar-oriented ripple based greedy search algorithm is proposed to reduce the search time of vector quantization. In order to reduce the dimensions of vectors, principal component analysis is used to find the principal components with the most variability. To find the closer codewords, Voronoi diagram is applied to find the Voronoi cells, then, the adjacency list can be generated. Finally, to improve the efficiency of codeword searching, a greedy search is adopted to reduce the searching space. The results of the present study show that the proposed approach achieves a better performance than planar Voronoi diagram search algorithm.
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面向平面的纹波贪婪搜索矢量量化算法
矢量量化技术已在各种应用中得到应用。在矢量量化中,搜索算法的效率是非常重要的。为了减少矢量量化的搜索时间,提出了一种面向平面的纹波贪婪搜索算法。为了降低向量的维数,采用主成分分析方法寻找变异最大的主成分。为了找到更接近的码字,采用Voronoi图来寻找Voronoi单元,然后生成邻接表。最后,为了提高码字搜索的效率,采用贪婪搜索来减少搜索空间。研究结果表明,该方法比平面Voronoi图搜索算法具有更好的搜索性能。
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