Fast Search Method for Image Vector Quantization Based on Equal-Average Equal-Variance and Partial Sum Concept

Z. Pan, K. Kotani, T. Ohmi
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引用次数: 1

Abstract

The encoding process of image vector quantization (VQ) is very heavy due to it performing a lot of k-dimensional Euclidean distance computations. In order to speed up VQ encoding, it is most important to avoid unnecessary exact Euclidean distance computations as many as possible by using features of a vector to estimate how large it is first so as to reject most of unlikely codewords. The mean, the variance, L 2 norm and partial sum of a vector have been proposed as effective features in previous works for fast VQ encoding. Recently, in the previous work (Z. Lu et al., 2003), three features of the mean, the variance and L2 norm are used together to derive an EEENNS search method, which is very search efficient but still has obvious computational redundancy. This paper aims at modifying the results of EEENNS method further by introducing another feature of partial sum to replace L2 norm feature so as to reduce more search space. Mathematical analysis and experimental results confirmed that the proposed method is more search efficient compared to (Z. Lu et al., 2003)
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基于等平均等方差和部分和概念的图像矢量量化快速搜索方法
由于图像矢量量化(VQ)需要进行大量的k维欧氏距离计算,编码过程非常繁重。为了加快VQ编码的速度,最重要的是尽可能多地避免不必要的精确欧氏距离计算,首先利用向量的特征来估计它的大小,从而拒绝大多数不可能的码字。均值、方差、l2范数和部分和是矢量快速编码的有效特征。最近,在之前的工作(Z. Lu et al., 2003)中,将均值、方差和L2范数三个特征结合在一起,推导出了一种EEENNS搜索方法,该方法搜索效率很高,但仍然存在明显的计算冗余。本文旨在进一步修改EEENNS方法的结果,通过引入部分和的另一个特征来代替L2范数特征,从而减少更多的搜索空间。数学分析和实验结果证实,该方法的搜索效率高于(Z. Lu et al., 2003)。
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