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A fuzzy vector quantization approach to image compression

机译:模糊矢量量化的图像压缩方法

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The use of fuzzy clustering analysis in the early stages of a vector quantization process is able to make this process less sensitive to initialization. This is justified by the fact that fuzzy clustering provides a framework for the quantitative formulation of the uncertainty typically involved in a training vector space. This paper proposes a fuzzy clustering based vector quantization algorithm, which employs an effective vector assignment strategy for the transition from fuzzy mode, where each training vector is assigned to more than one clusters, to crisp mode, where each training vector is assigned to only one cluster. This transition is controlled by analytical conditions that are obtained by minimizing a modified objective function for the fuzzy c-means algorithm. The application to image compression shows that the proposed approach is able to achieve a very efficient performance, while maintaining the computational capabilities of other methods reported in the literature. (c) 2004 Elsevier Inc. All rights reserved.
机译:在向量量化过程的早期阶段使用模糊聚类分析可以使该过程对初始化的敏感性降低。模糊聚类为训练向量空间中通常涉及的不确定性的定量表述提供了一个框架,这证明了这一点。本文提出了一种基于模糊聚类的矢量量化算法,该算法采用一种有效的矢量分配策略来实现从模糊模式(将每个训练矢量分配给一个以上的簇)到清晰模式(其中每个训练矢量仅分配给一个)的过渡簇。这种过渡受分析条件控制,分析条件是通过使模糊c均值算法的修改后的目标函数最小化而获得的。图像压缩的应用表明,所提出的方法能够实现非常有效的性能,同时保持文献中报道的其他方法的计算能力。 (c)2004 Elsevier Inc.保留所有权利。

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