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Fuzzy declustering-based vector quantization

机译:基于模糊聚类的矢量量化

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摘要

Vector quantization is a useful approach for multi-dimensional data Compression and pattern classification. One of the most popular techniques for vector quantization design is the LBG (Linde, Buzo, Gray) algorithm. To address the problem of producing poor estimate of vector centroids which are subjected to biased data in vector quantization; we propose a fuzzy declustering strategy for the LBG algorithm. The proposed technique calculates appropriate declustering weights to adjust the global data distribution. Using the result of fuzzy declustering-based vector quantization design, we incorporate the notion of fuzzy partition entropy into the distortion measures that can be useful for classification of spectral features. Experimental results obtained from simulated and real data sets demonstrate the effective performance of the proposed approach.
机译:向量量化是用于多维数据压缩和模式分类的有用方法。矢量量化设计中最流行的技术之一是LBG(林德,布佐,格雷)算法。为了解决矢量质心的估计差的问题,矢量质心在矢量量化中受到有偏数据的影响;我们为LBG算法提出了一种模糊聚类策略。所提出的技术计算适当的聚类权重以调整全局数据分布。使用基于模糊聚类的矢量量化设计结果,我们将模糊分区熵的概念纳入了失真度量中,这对于光谱特征的分类很有用。从模拟和真实数据集获得的实验结果证明了该方法的有效性能。

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