论文标题

通过结合自适应数字滤波器和复发性神经网络来取消声学回声

Acoustic Echo Cancellation by Combining Adaptive Digital Filter and Recurrent Neural Network

论文作者

Ma, Lu, Huang, Hua, Zhao, Pei, Su, Tengrong

论文摘要

声音回波取消(AEC)在语音相互作用中起关键作用。由于具有明确的数学原理和智能性质以适应条件,因此始终将具有不同类型的实现类型的自适应过滤器用于AEC,提供了相当大的性能。但是,结果中会有某种残留回声,包括通过在音频设备上非线性组件引起的估计与现实和非线性残基之间引入的线性残基。线性残留物可以通过精细的结构和方法减少,从而使非线性残基可治不取,以抑制。但是,已经提出了一些非线性处理方法,它们的抑制作用很复杂且效率低下,并且会对语音音频造成损害。在本文中,提出了通过自适应过滤器和神经网络组合的融合方案。可以通过自适应过滤大规模减少回声,从而导致几乎没有残留回声。尽管它比语音音频小得多,但也可能会被人的耳朵感知,并会使沟通烦恼。神经网络经过精心设计和训练,用于抑制这种残留回声。进行了与当前方法相比的实验,从而验证了所提出的组合方案的有效性和优越性。

Acoustic Echo Cancellation (AEC) plays a key role in voice interaction. Due to the explicit mathematical principle and intelligent nature to accommodate conditions, adaptive filters with different types of implementations are always used for AEC, giving considerable performance. However, there would be some kinds of residual echo in the results, including linear residue introduced by mismatching between estimation and the reality and non-linear residue mostly caused by non-linear components on the audio devices. The linear residue can be reduced with elaborate structure and methods, leaving the non-linear residue intractable for suppression. Though, some non-linear processing methods have already be raised, they are complicated and inefficient for suppression, and would bring damage to the speech audio. In this paper, a fusion scheme by combining adaptive filter and neural network is proposed for AEC. The echo could be reduced in a large scale by adaptive filtering, resulting in little residual echo. Though it is much smaller than speech audio, it could also be perceived by human ear and would make communication annoy. The neural network is elaborately designed and trained for suppressing such residual echo. Experiments compared with prevailing methods are conducted, validating the effectiveness and superiority of the proposed combination scheme.

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