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A novel approach for vector quantization using a neural network, mean shift, and principal component analysis-based seed re-initialization

机译:一种使用神经网络,均值漂移和基于主成分分析的种子重新初始化的矢量量化新方法

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摘要

In this paper, a hybrid approach for vector quantization (VQ) is proposed for obtaining the better codebook. It is modified and improved based on the centroid neural network adaptive resonance theory (CNN-ART) and the enhanced Linde-Buzo-Gray (LBG) approaches to obtain the optimal solution. Three modules, a neural net (NN)-based clustering, a mean shift (MS)-based refinement, and a principal component analysis (PCA)-based seed re-initialization, are repeatedly utilized in this study. Basically, the seed re-initialization module generates a new initial codebook to replace the low-utilized codewords during the iteration. The NN-based clustering module clusters the training vectors using a competitive learning approach. The clustered results are refined using the mean shift operation. Some experiments in image compression applications were conducted to show the effectiveness of the proposed approach.
机译:本文提出了一种混合的矢量量化方法(VQ),以获取更好的密码本。根据质心神经网络自适应共振理论(CNN-ART)和增强的Linde-Buzo-Gray(LBG)方法对其进行了修改和改进,以获得最佳解决方案。在此研究中,重复使用了三个模块,即基于神经网络(NN)的聚类,基于均值漂移(MS)的细化和基于主成分分析(PCA)的种子重新初始化。基本上,种子重新初始化模块会生成一个新的初始代码本,以在迭代过程中替换利用率较低的代码字。基于NN的聚类模块使用竞争性学习方法对训练向量进行聚类。聚类结果使用均值平移操作进行细化。在图像压缩应用中进行了一些实验,以证明该方法的有效性。

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