Spectral feature-based nonlinear residual echo suppression

A. Schwarz, Christian Hofmann, Walter Kellermann
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引用次数: 35

Abstract

We propose a method for nonlinear residual echo suppression that consists of extracting spectral features from the far-end signal, and using an artificial neural network to model the residual echo magnitude spectrum from these features. We compare the modeling accuracy achieved by realizations with different features and network topologies, evaluating the mean squared error of the estimated residual echo magnitude spectrum. We also present a low complexity real-time implementation combining an offline-trained network with online adaptation, and investigate its performance in terms of echo suppression and speech distortion for real mobile phone recordings.
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基于频谱特征的非线性残馀回波抑制
本文提出了一种非线性残余回波抑制方法,该方法包括从远端信号中提取频谱特征,并使用人工神经网络根据这些特征对残余回波幅度谱进行建模。我们比较了不同特征和网络拓扑实现的建模精度,评估了估计的残差回波幅度谱的均方误差。我们还提出了一种结合离线训练网络和在线适应的低复杂性实时实现,并研究了其在真实手机录音的回波抑制和语音失真方面的性能。
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