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Methods for learning adaptive dictionary in underdetermined speech separation

机译:确定性语音分离中自适应词典的学习方法

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Underdetermined speech separation is a challenging problem that has been studied extensively in recent years. A promising method to this problem is based on the so-called sparse signal representation. Using this technique, we have recently developed a multi-stage algorithm, where the source signals are recovered using a pre-defined dictionary obtained by e.g. the discrete cosine transform (DCT). In this paper, instead of using the pre-defined dictionary, we present three methods for learning adaptive dictionaries for the reconstruction of source signals, and compare their performance with several state-of-the-art speech separation methods.
机译:语音分离不足是一个具有挑战性的问题,近年来已经对其进行了广泛的研究。解决该问题的一种有前途的方法是基于所谓的稀疏信号表示。使用这种技术,我们最近开发了一种多级算法,其中使用通过例如由图2获得的预定义字典来恢复源信号。离散余弦变换(DCT)。在本文中,我们不使用预定义词典,而是提供了三种学习自适应词典以重建源信号的方法,并将其性能与几种最新的语音分离方法进行了比较。

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