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Fast fuzzy vector quantization

机译:快速模糊矢量量化

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摘要

In this paper we introduce a novel fuzzy vector quantization algorithm that tries to solve certain problems related to the implementation of fuzzy cluster analysis in vector quantization. The proposed method employs an objective function that combines the merits of fuzzy and crisp clustering in a uniform fashion. The algorithm's structure encompasses two basic design strategies. The first one concerns the transition from fuzzy mode, where each training vector is assigned to more than one codewords, to crisp mode where each training vector is assigned to only one codeword. To accomplish this, we use analytical conditions that are extracted by the minimization of the aforementioned objective function. The second one is a specially designed pattern reduction module that helps to significantly reduce the computational cost. This module acts upon a training vector as soon as it is transferred in crisp mode. The resulting vector quantization scheme is fast and easy to implement. Finally, simulation experiments show that the method is efficient, while it appears to be insensitive with respect to the selection of its design parameters.
机译:在本文中,我们介绍了一种新颖的模糊矢量量化算法,该算法试图解决与矢量量化中模糊聚类分析的实现相关的某些问题。所提出的方法采用了一种目标函数,该函数以统一的方式结合了模糊聚类和清晰聚类的优点。该算法的结构包含两种基本设计策略。第一个涉及从模糊模式(其中每个训练向量分配给一个以上的码字)到清晰模式的过渡(其中每个训练向量仅分配给一个码字的清脆模式)。为此,我们使用通过最小化上述目标函数提取的分析条件。第二个是专门设计的模式减少模块,它有助于显着降低计算成本。一旦以清晰模式传输该模块,它就会对训练矢量起作用。所得的矢量量化方案快速且易于实现。最后,仿真实验表明,该方法是有效的,尽管它对设计参数的选择似乎不敏感。

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