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首页> 外文期刊>Journal of VLSI signal processing systems >Blind Separation of Orthogonal Mixtures of Spatially-Sparse Sources with Unknown Sparsity Levels and with Temporal Blocks
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Blind Separation of Orthogonal Mixtures of Spatially-Sparse Sources with Unknown Sparsity Levels and with Temporal Blocks

机译:具有稀疏度水平和时间块的空间稀疏源的正交混合的盲分离

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摘要

We address the problem of blind separation of a static, linear orthogonal mixture, where separation is not based on statistical assumptions (such as independence), but on the sources' spatial sparsity. An algorithm for this problem was proposed by Mishali and Eldar in 2008. It consists of first recovering the supports of the sources, and then recovering their values, but has two shortcomings: One is an assumption that the spatial sparsity level at each time-instant is constant and known; The second is the algorithm's sensitivity to possible presence of temporal "blocks" of the signals, sharing identical supports. In this work we propose two pre-processing stages for improving the algorithm's applicability and the performance. A first stage is aimed at identifying "blocks" of similar support, and pruning the data accordingly. A second stage is aimed at recovering the sparsity level at each time-instant. We demonstrate the improvement using both synthetic data and mixed text-images. We also show that the improved algorithm outperforms the recovery rate of alternative source separation methods for such contexts, including K-SVD, a leading method for dictionary learning.
机译:我们解决了静态线性正交混合物盲分离的问题,该分离不是基于统计假设(例如独立性),而是基于源的空间稀疏性。 Mishali和Eldar在2008年提出了一个针对此问题的算法。该算法包括首先恢复源的支持,然后恢复其值,但是有两个缺点:一个是假设每个时间瞬时的空间稀疏性级别恒定且已知;第二个是算法对信号的时间“块”可能存在的敏感性,共享相同的支持。在这项工作中,我们提出了两个预处理阶段,以提高算法的适用性和性能。第一阶段旨在识别相似支持的“块”,并相应地修剪数据。第二阶段旨在恢复每个即时的稀疏度。我们展示了使用合成数据和混合文本图像的改进。我们还表明,针对这种情况,改进的算法优于替代源分离方法的恢复率,其中包括K-SVD(一种用于字典学习的领先方法)。

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