Memory augmented neural network for source separation

K. Tsou, Jen-Tzung Chien
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引用次数: 11

Abstract

Recurrent neural network (RNN) based on long short-term memory (LSTM) has been successfully developed for single-channel source separation. Temporal information is learned by using dynamic states which are evolved through time and stored as an internal memory. The performance of source separation is constrained due to the limitation of internal memory which could not sufficiently preserve long-term characteristics from different sources. This study deals with this limitation by incorporating an external memory in RNN and accordingly presents a memory augmented neural network for source separation. In particular, we carry out a neural Turing machine to learn a separation model for sequential signals of speech and noise in presence of different speakers and noise types. Experiments show that speech enhancement based on memory augmented neural network consistently outperforms that using deep neural network and LSTM in terms of short-term objective intelligibility measure.
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用于源分离的记忆增强神经网络
基于长短期记忆(LSTM)的递归神经网络(RNN)已成功地用于单通道信源分离。时间信息是通过使用动态状态来学习的,动态状态随着时间的推移而进化,并作为内部记忆存储。由于内部存储器的限制,不能充分地保存来自不同源的长期特征,从而限制了源分离的性能。本研究通过在RNN中加入外部记忆来解决这一限制,并相应地提出了一种用于源分离的记忆增强神经网络。特别是,我们实现了一个神经图灵机来学习语音和噪声序列信号在不同说话者和噪声类型存在下的分离模型。实验表明,基于记忆增强神经网络的语音增强在短期客观可理解性方面始终优于基于深度神经网络和LSTM的语音增强。
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