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一种具有自动聚类检测功能的欠定型盲信号混叠矩阵估计算法
引用本文:余莎丽,田森平.一种具有自动聚类检测功能的欠定型盲信号混叠矩阵估计算法[J].科学技术与工程,2014,14(3).
作者姓名:余莎丽  田森平
作者单位:华南理工大学广州学院,华南理工大学
基金项目:广东省自然科学基金S2012010009675
摘    要:针对源信号个数未知情况下的欠定稀疏分量分析模型,提出一种具有自动聚类检测功能的混叠矩阵估计算法。提出实现源信号个数的判定的观测信号自动检测聚类方法,同时利用主成分分析对超直线进行估计,从而实现混叠矩阵的精确估计。仿真实验结果表明,该算法适用范围广,是一种快速精确且稳健的混叠矩阵估计算法。

关 键 词:稀疏分量分析  源信号正交性假设  噪声
收稿时间:2013/7/31 0:00:00
修稿时间:2013/9/14 0:00:00

A New Matrix Clustering Algorithm with Auto Detection for Underdetermined Sparse Component Analysis
yu sha li and tian sen ping.A New Matrix Clustering Algorithm with Auto Detection for Underdetermined Sparse Component Analysis[J].Science Technology and Engineering,2014,14(3).
Authors:yu sha li and tian sen ping
Institution:South China University of Technology
Abstract:To the underdetermined sparse component analysis (SCA) model with unknown sources number, a new robust clustering algorithm with auto detect function for mixture matrix estimation is addressed in this paper. This approach consists of two parts: signal clustering and mixing matrix estimation. In the first step, we propose a probability criterion for sources number detection, which stems from deduction by using a fit mathematical statistics model. To the second stage, Principal Component Analysis (PCA) is introduced to the mixing matrix estimation. Experiment simulations illustrate the effectiveness of the new clustering algorithm.
Keywords:Sparse Component Analysis (SCA)  orthgonal condition of sources  noise
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