Blind signal separation by matching pursuit based grouping

Y. Huang, R. Dony
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Abstract

This paper describes a novel matching pursuit based grouping approach for separating a speech signal from a mixture with non-Gaussian interference. At first, the mixture signal is decomposed into atoms by matching pursuit with a Gabor dictionary. Then a psychoacoustic based grouping algorithm is developed to cluster the atoms into groups to identify the atoms of a speech signal. These atoms are then used to reconstruct the desired speech signal. Simulations were performed on speech corrupted by factory noise and music. Preliminary results show that the proposed approach can remove almost all non-speech signal while the recovered speech signal possesses acceptable intelligibility.
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基于分组匹配跟踪的盲信号分离
本文提出了一种新的基于匹配追踪的分组方法,用于从非高斯干扰混合信号中分离语音信号。首先,利用Gabor字典匹配追踪,将混合信号分解成原子。在此基础上,提出了一种基于心理声学的分组算法,对语音信号中的原子进行分组识别。然后用这些原子来重建所需的语音信号。对受工厂噪声和音乐干扰的语音进行了仿真。初步结果表明,该方法可以去除几乎所有的非语音信号,而恢复的语音信号具有可接受的清晰度。
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