首页> 外文会议>International Symposium on Neural Networks pt.1; 20040819-20040821; Dalian; CN >A Clustering Approach for Blind Source Separation with More Sources than Mixtures
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A Clustering Approach for Blind Source Separation with More Sources than Mixtures

机译:一种混合源比混合源更多的盲源分离聚类方法

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摘要

In this paper, blind source separation is discussed with more sources than mixtures when the sources are sparse. The blind separation technique includes two steps. The first step is to estimate a mixing matrix, and the second is to estimate sources. The mixing matrix can be estimated by using a clustering approach which is described by the generalized exponential mixture model. The generalized exponential mixture model is a powerful uniform framework to learn the mixing matrix for sparse sources. After the mixing matrix is estimated, the sources can be obtained by solving a linear programming problem. The techniques we present here can be extended to the blind separation of more sources than mixtures with a Gaussian noise.
机译:在本文中,当稀疏源时讨论的盲源分离比混合源更多。盲分离技术包括两个步骤。第一步是估计混合矩阵,第二步是估计源。可以通过使用聚类方法来估计混合矩阵,该聚类方法由广义指数混合模型描述。广义指数混合模型是学习稀疏源混合矩阵的强大统一框架。在估计混合矩阵之后,可以通过解决线性规划问题来获得源。我们在此提出的技术可以扩展到比具有高斯噪声的混合物更多地盲分离。

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