The search accuracy of tree-structured VQ

J. Lin
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Abstract

Summary form only given. It is well-known that tree-structured vector quantization may sacrifice performance for reduced computation. The performance loss can be attributed to two separate sources, the design approximation and the search inaccuracy. To measure the search performance, we define the search accuracy as the percentage of input vectors that are quantized with minimum distortion. Our studies show that low search accuracy is the main cause of performance loss for some of the best current tree-structured vector quantizers. Although the design approximation and search performance can be analyzed separately, we observe that the result of design may actually affect the search accuracy. Most of the current design techniques seek to minimize the distortion in the design without any consideration of their effect on the search. The tree search accuracy as a result of these designs could be as low as 50 percent. In order to improve the overall performance, the tree design should not be optimized without consideration of tree search accuracy. The difficulty is that it is not possible to measure the search accuracy at the design stage. We develop a design algorithm that incorporates the search accuracy and produce a tree-structured that improves the search accuracy significantly. Experimental results in image compression show that the strategy works surprisingly well in improving the tree search accuracy from a low of 50% to over 80 and 90%.
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树状结构VQ的搜索精度
只提供摘要形式。众所周知,树结构矢量量化可能会牺牲性能以减少计算量。性能损失可以归结为两个不同的来源,设计近似和搜索不准确。为了衡量搜索性能,我们将搜索精度定义为以最小失真量化的输入向量的百分比。我们的研究表明,低搜索精度是目前一些最好的树结构矢量量化器性能损失的主要原因。虽然设计近似和搜索性能可以分开分析,但我们观察到设计结果实际上可能影响搜索精度。目前的大多数设计技术都是为了尽量减少设计中的失真,而不考虑它们对搜索的影响。由于这些设计,树搜索的准确率可能低至50%。为了提高整体性能,不能在不考虑树搜索精度的情况下优化树的设计。难点在于无法在设计阶段测量搜索精度。我们开发了一种结合搜索精度的设计算法,并产生了一个显著提高搜索精度的树状结构。图像压缩实验结果表明,该策略将树搜索准确率从50%提高到80%和90%以上。
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