A Convex Geometry-Based Blind Source Separation Method for Separating Nonnegative Sources

This paper presents a convex geometry (CG)-based method for blind separation of nonnegative sources. First, the unaccessible source matrix is normalized to be column-sum-to-one by mapping the available observation matrix. Then, its zero-samples are found by searching the facets of the convex hull sp...

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Veröffentlicht in:IEEE transaction on neural networks and learning systems 2015-08, Vol.26 (8), p.1635-1644
Hauptverfasser: Yang, Zuyuan, Xiang, Yong, Rong, Yue, Xie, Kan
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Sprache:eng
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Zusammenfassung:This paper presents a convex geometry (CG)-based method for blind separation of nonnegative sources. First, the unaccessible source matrix is normalized to be column-sum-to-one by mapping the available observation matrix. Then, its zero-samples are found by searching the facets of the convex hull spanned by the mapped observations. Considering these zero-samples, a quadratic cost function with respect to each row of the unmixing matrix, together with a linear constraint in relation to the involved variables, is proposed. Upon which, an algorithm is presented to estimate the unmixing matrix by solving a classical convex optimization problem. Unlike the traditional blind source separation (BSS) methods, the CG-based method does not require the independence assumption, nor the uncorrelation assumption. Compared with the BSS methods that are specifically designed to distinguish between nonnegative sources, the proposed method requires a weaker sparsity condition. Provided simulation results illustrate the performance of our method.
ISSN:2162-237X
2162-2388
DOI:10.1109/TNNLS.2014.2350026