Underdetermined blind separation of sparse sources with instantaneous and convolutive mixtures

D. Luengo, I. Santamaría, L. Vielva, C. Pantaleón
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引用次数: 14

Abstract

We consider the underdetermined blind source separation problem with linear instantaneous and convolutive mixtures when the input signals are sparse, or have been rendered sparse. In the underdetermined case the problem requires solving three sub-problems: detecting the number of sources, estimating the mixing matrix, and finding an adequate inversion strategy to obtain the sources. This paper solves the first two problems. We assume that the number of sources is unknown, and estimate it by means of an information theoretic criterion (MDL). Then the mixing matrix is expressed in spheric coordinates and we estimate sequentially the angles and amplitudes of each column, and their order. The performance of the method is illustrated through simulations.
瞬态和卷积混合稀疏源的欠定盲分离
本文研究了当输入信号稀疏或被渲染为稀疏时,具有线性瞬时和卷积混合的欠定盲源分离问题。在欠定情况下,该问题需要解决三个子问题:检测源数量,估计混合矩阵,找到适当的反演策略来获取源。本文解决了前两个问题。我们假设源的数量是未知的,并通过信息理论准则(MDL)来估计它。然后用球坐标系表示混合矩阵,并依次估计各柱的角度和振幅及其阶数。仿真结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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