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基于改进K-means聚类和霍夫变换的稀疏源混合矩阵盲估计算法
引用本文:付宁,乔立岩,彭喜元.基于改进K-means聚类和霍夫变换的稀疏源混合矩阵盲估计算法[J].电子学报,2009,37(Z1):92-96.
作者姓名:付宁  乔立岩  彭喜元
作者单位:哈尔滨工业大学自动化测试与控制系,哈尔滨工业大学,3033信箱,黑龙江哈尔滨,150080
摘    要: 混合矩阵的估计是稀疏源盲分离的关键组成部分,其估计精度直接影响到源信号的估计精度.本文首先针对K-means聚类算法依赖初始值选取的问题,将微分进化算法思想引入到K-means聚类算法中,提出了一种改进的K-means聚类算法.利用该算法,对稀疏源混合信号数据进行聚类,保证了聚类结果的鲁棒性.然后利用霍夫变换,对每一类数据的聚类中心进行修正,从而估计出混合矩阵,提高了混合矩阵的估计精度.仿真实验表明,相比于经典的稀疏源混合矩阵盲估计算法,本文算法具有更强的鲁棒性和更高的估计精度.

关 键 词:盲源分离  稀疏信号  聚类  K-means  微分进化  霍夫变换
收稿时间:2008-10-07

Blind Recovery of Mixing Matrix with Sparse Sources Based on Improved K-means Clustering and Hough Transform
FU Ning,QIAO Li-yan,PENG Xi-yuan.Blind Recovery of Mixing Matrix with Sparse Sources Based on Improved K-means Clustering and Hough Transform[J].Acta Electronica Sinica,2009,37(Z1):92-96.
Authors:FU Ning  QIAO Li-yan  PENG Xi-yuan
Affiliation:Department of Automatic Test and Control;Harbin Institute of Technology;P.O.Box 3033;Harbin;Heilongjiang 150080;China
Abstract:Blind mixing matrix recovery is one of the most important steps in blind separation of sparse sources,which impacts significantly on the recovery accuracy of source signals.A novel improved K-means clustering algorithm is proposed based on differential evolution,to avoid the partial convergence problem of the K-means algorithm.The proposed algorithm is applied to allocate the sparse mixture data to several clusters,thus guaranteeing the robustness of the clustering.Then the cluster centers are amended throu...
Keywords:K-means
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