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Blind source separation by sparse decomposition

机译:稀疏分解分离盲源

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Abstract: The blind source separation problem is to extract the underlying source signals from a set of their linear mixtures, where the mixing matrix is unknown. This situation is common, eg in acoustics, radio, and medical signal processing. We exploit the property of the sources to have a sparse representation in a corresponding signal dictionary. Such a dictionary may consist of wavelets, wavelet packets, etc., or be obtained by learning from a given family of signals. Starting from the maximum a posteriori framework, which is applicable to the case of more sources than mixtures, we derive a few other categories of objective functions, which provide faster and more robust computations, when there are an equal number of sources and mixtures. Our experiments with artificial signals and with musical sounds demonstrate significantly better separation than other known techniques. !18
机译:摘要:盲源分离问题是从混合矩阵未知的一组线性混合中提取潜在的源信号。这种情况很常见,例如在声学,无线电和医学信号处理中。我们利用源的属性在相应的信号字典中具有稀疏表示。这样的字典可以由小波,小波包等组成,或者可以通过从给定的信号家族中学习而获得。从最大后验框架开始,该后验框架适用于源比混合更多的情况,我们推导出了其他几类目标函数,当源和混合的数目相等时,它们提供了更快,更可靠的计算。我们在人造信号和音乐声音上进行的实验表明,与其他已知技术相比,分离效果要好得多。 !18

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