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A comparison of BSS algorithms in harsh environments

机译:恶劣环境下的BSS算法比较

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摘要

This paper compares the performance of several blind source separation (BSS) algorithms in environments of varying reverberation, noise, microphone spacing, and sparsity. Of particular interest are two frequency domain algorithms; one Cascaded ICA with Intervention Alignment (CICAIA), and one algorithm by Pham, Servière, and Boumaraf. The former is found to work exceptionally well in high noise, low microphone spacing environments. The latter proves to work exceptionally well in high SNR and moderate- to widely-spaced arrays. In addition, while the literature on BSS algorithms is extensive, their performance under varying noise conditions has not been widely explored. Also, though usually BSS results for given reverberation times are provided, the sparseness of the room responses (with the same reverberation times) are not. Here we empirically demonstrate that the sparseness of the source-to-sensor impulse responses dramatically effects BSS performance and therefore should always be reported.
机译:本文比较了在混响,噪声,麦克风间距和稀疏度变化的环境中几种盲源分离(BSS)算法的性能。特别令人感兴趣的是两个频域算法。一种是带干预对齐的级联ICA(CICAIA),另一种是Pham,Servière和Boumaraf的算法。发现前者在高噪声,低麦克风间距的环境中表现出色。后者被证明在高SNR和中等至宽间隔的阵列中表现出色。此外,尽管有关BSS算法的文献非常丰富,但在各种噪声条件下的性能仍未得到广泛研究。此外,尽管通常会提供给定混响时间的BSS结果,但没有提供房间响应(具有相同混响时间)的稀疏性。在这里我们凭经验证明源到传感器冲激响应的稀疏性会严重影响BSS性能,因此应始终进行报告。

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