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Fuzzy vector quantization algorithms and their application in image compression

机译:模糊矢量量化算法及其在图像压缩中的应用

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摘要

This paper presents the development and evaluation of fuzzy vector quantization algorithms. These algorithms are designed to achieve the quality of vector quantizers provided by sophisticated but computationally demanding approaches, while capturing the advantages of the frequently used in practice k-means algorithm, such as speed, simplicity, and conceptual appeal. The uncertainty typically associated with clustering tasks is formulated in this approach by allowing the assignment of each training vector to multiple clusters in the early stages of the iterative codebook design process. A training vector assignment strategy is also proposed for the transition from the fuzzy mode, where each training vector can be assigned to multiple clusters, to the crisp mode, where each training vector can be assigned to only one cluster. Such a strategy reduces the dependence of the resulting codebook on the random initial codebook selection. The resulting algorithms are used in image compression based on vector quantization. This application provides the basis for evaluating the computational efficiency of the proposed algorithms and comparing the quality of the resulting codebook design with that provided by competing techniques.
机译:本文介绍了模糊矢量量化算法的发展与评价。这些算法旨在实现复杂但计算要求高的方法提供的矢量量化器的质量,同时捕获实践中常用的k均值算法的优势,例如速度,简便性和概念吸引力。通过允许在迭代码本设计过程的早期阶段将每个训练向量分配给多个群集,可以用这种方法来表达通常与群集任务相关的不确定性。还提出了一种训练向量分配策略,用于从模糊模式(其中每个训练向量可以分配给多个群集)到明快模式(其中每个训练向量只能分配给一个群集)的过渡。这样的策略减少了所得码本对随机初始码本选择的依赖性。所得算法用于基于矢量量化的图像压缩。该应用程序为评估所提出算法的计算效率以及将所得代码本设计的质量与竞争技术所提供的代码本设计的质量进行比较提供了基础。

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