基于单源点识别和改进聚类方法的混合矩阵估计

Dongyang Zhu, Xiaohong Ma
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引用次数: 1

摘要

混合矩阵是稀疏表示欠定盲源分离中的关键问题。当源不满足w -不相交正交条件时,传统聚类方法的性能会下降。本文提出了一种有效的方法,该方法对源的稀疏性设置较少的条件,以改善混合矩阵的估计。首先,我们在观测值的时频域中检测只有单一源贡献的点。在这些点上的样本对于混合矩阵估计是更可靠的。其次,通过观测信号的特征来估计源的数量,而源的数量通常需要先验地知道。最后,针对传统k均值聚类算法的缺陷,提出了一种改进的初始聚类中心选择方法。给出了所提方法的数值性能,突出了它们与现有方法相比的性能增益,特别是在源数量未知且源相对较少稀疏的情况下。
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Mixing matrix estimation based on single-source point identification and improved clustering method
Mixing matrix is the key issue in the under-determined blind source separation with sparse representation. The performance of traditional clustering method degrades when the sources do not satisfy W-disjoint orthogonal condition. This paper puts forward an effective method, which sets less condition on the sparseness of the sources, to improve the estimation of the mixing matrix. Firstly, we detect the points in the time-frequency domain of the observations that only single source contributes. Samples at these points are more reliable for the mixing matrix estimation. Secondly, the number of sources, which often needs to be known a priori, is estimated through the characteristics of the observed signals. Finally, an improved initial cluster center selection method is presented for the defects of the traditional K-means cluster algorithm. The numerical performance of the proposed methods are provided highlighting their performance gain compared to existing ones, especially in the cases where the number of sources is unknown and the sources are relatively less sparse.
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