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Time-frequency blind signal separation: extended methods, performance evaluation for speech sources

机译:时频盲信号分离:扩展方法,语音源性能评估

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Most reported blind source separation (BSS) methods are based on independent component analysis (ICA), which esp. requires the sources to be stationary (and non-Gaussian). Time-frequency (TF) BSS methods avoid these restrictions and are therefore e.g. attractive for speech signals. We first introduce extensions of three types of TF-BSS methods that we recently proposed, and we analyze the relationships between these methods. We then provide a detailed benchmarking of these methods, based on a large number of tests performed with linear instantaneous mixtures of speech signals. This demonstrates the good performance of these methods (SNR typically above 60 dB) and their low sensitivity to the values of their TF parameters.
机译:大多数报告的盲源分离(BSS)方法都是基于独立成分分析(ICA),尤其是基于独立成分分析(ICA)的方法。要求光源是固定的(非高斯光源)。时频(TF)BSS方法避免了这些限制,因此例如对语音信号很有吸引力。我们首先介绍最近提出的三种类型的TF-BSS方法的扩展,然后分析这些方法之间的关系。然后,我们基于语音信号的线性瞬时混合执行的大量测试,提供了这些方法的详细基准测试。这证明了这些方法的良好性能(SNR通常高于60 dB),以及它们对TF参数值的低灵敏度。

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