自适应码长最小增量下的上下文量化

Min Chen, Chen Liu, F. Wang
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引用次数: 2

摘要

本文提出了一种基于关联传播算法的任意源上下文量化方法。在该算法中,上下文量化器的设计目标是使源序列的自适应码长最小。为了找到最优的类数,建议将自适应编码长度的增量作为两个条件概率分布的相似度量,并以此构造相似矩阵作为亲和性传播算法的输入。在给定迭代次数后,得到具有最优类数的最优量化器,同时使自适应码长最小化。仿真结果表明,该算法比基于K-means的最小条件熵上下文量化的结果更好,且计算复杂度更低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context Quantization Under the Minimum Increment of the Adaptive Code Length
In this paper, the context quantization for I-ary source based on the affinity propagation algorithm is presented. In this algorithm, the design objective of the context quantizer is aimed to minimize the adaptive code length of the source sequence. In purpose of finding the optimal number of classes, the increment of the adaptive code length is suggested to be the similarity measure of two conditional probability distributions, by which the similarity matrix is constructed as the input of the affinity propagation algorithm. After the given number of iterations, the optimal quantizer with the optimal number of classes is achieved and the adaptive code length is minimized at the same time. The simulations indicate that the proposed algorithm produces results that are better than the results obtained by the minimum conditional entropy context quantization implemented by K-means with lower computational complexity.
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