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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Adaptive Vector Quantization with Creation and Reduction Grounded in the Equinumber Principle
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Adaptive Vector Quantization with Creation and Reduction Grounded in the Equinumber Principle

机译:基于等值原理的基于生成和约简的自适应矢量量化

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摘要

This paper concerns the constitution of unit structures in neural networks for adaptive vector quantization. Partition errors are mutually equivalent when the number of inputs in a partition space is mutually equal, and average distortion is asymptotically minimized. This is termed the equinumber principle, in which two types of adaptive vector quantization are presented to avoid the initial dependence of reference vectors. Conventional techniques, such as structural learning with forgetting, have the same number of output units from start to finish. Our approach explicitly changes the number of output units to reach a predetermined number without neighboring relations equalling the numbers of inputs in a partition space. First, output units are sequentially created based on the equinumber principle in the learning process. Second, output units are sequentially deleted to reach a prespecified number. Experimental results demonstrate the effectiveness of these techniques in average distortion. These approaches are applied to image data and their feasibility was confirmed in image coding.
机译:本文涉及神经网络中用于自适应矢量量化的单元结构的构造。当分区空间中的输入数彼此相等时,分区误差彼此相等,并且平均失真渐近地最小化。这被称为等值原理,其中提出了两种类型的自适应矢量量化以避免参考矢量的初始依赖性。常规技术(例如带遗忘的结构学习)从头到尾具有相同数量的输出单位。我们的方法明确地将输出单元的数量更改为达到预定数量,而相邻关系不等于分区空间中的输入数量。首先,在学习过程中,基于等值原理顺序创建输出单元。其次,输出单元被顺序删除以达到预定数量。实验结果证明了这些技术在平均失真方面的有效性。这些方法应用于图像数据,并在图像编码中证实了其可行性。

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