基于多节点稀疏表示的盲源分离

P. Kisilev, M. Zibulevsky, Y. Zeevi
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引用次数: 8

摘要

盲源分离问题涉及从一组未知混合矩阵的线性混合信号中提取底层源信号。最近人们发现,利用信号字典表示的源的稀疏性,可以显著提高分离的质量。它在图像处理问题中特别有用,其中信号具有很强的空间稀疏性。我们使用多尺度变换,如小波或小波包,将信号分解成具有不同稀疏度的局部特征集。我们使用这个固有属性来选择最好的(最稀疏的)特征子集进行进一步的分离。对一维信号和图像的实验表明,该方法显著提高了分离质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind source separation using multinode sparse representation
The blind source separation problem is concerned with extraction of the underlying source signals from a set of their linear mixtures, where the mixing matrix is unknown. It was discovered recently, that exploiting the sparsity of sources in their representation according to some signal dictionary, dramatically improves the quality of separation. It is especially useful in image processing problems, wherein signals possess strong spatial sparsity. We use multiscale transforms, such as wavelet or wavelet packets, to decompose signals into sets of local features with various degrees of sparsity. We use this intrinsic property for selecting the best (most sparse) subsets of features for further separation. Experiments with 1D signals and images demonstrate significant improvement of separation quality.
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