Enhancement of residual echo for improved acoustic echo cancellation

Ted S. Wada, B. Juang
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引用次数: 8

Abstract

This paper investigates the use of a signal enhancement technique, namely a noise suppressing nonlinearity, on the adaptive filter error in order to increase the stability and the performance of acoustic echo cancellation (AEC) when there is a continuous distortion to the acoustic echo signal. The algorithm presented here differs from others in that the enhancement of signal is done in the adaptation loop, rather than as a post-processing technique for further reduction of residual echo in the signal, and that the resulting nonlinearity for the cancellation error is formulated as a solution to the signal enhancement problem. Combining the nonlinear error suppression method with NLMS and other adaptive step-size algorithms based on NLMS shows an improvement of between 5 to 15 dB in the average ERLE for additive white noise and around 2 dB for speech coding distortion when a simulated acoustic echo is used. The reduction of the misalignment of 5 dB or more for both noise cases can be expected. The technique is shown to be beneficial also with a real acoustic echo. The new method is seen as a viable technique for improving the existing AEC algorithms when the acoustic echo is corrupted by linear distortion in the form of additive noise or by nonlinear distortion in the form of speech coding.
增强残余回波以改善声学回声消除
本文研究了在自适应滤波误差上使用信号增强技术,即噪声抑制非线性,以提高声回波信号存在连续失真时的稳定性和声回波抵消(AEC)性能。这里提出的算法与其他算法的不同之处在于,信号的增强是在自适应回路中完成的,而不是作为进一步减少信号中残余回波的后处理技术,并且由此产生的抵消误差的非线性被表述为信号增强问题的解决方案。将非线性误差抑制方法与NLMS和其他基于NLMS的自适应步长算法相结合,在使用模拟声学回波时,对加性白噪声的平均ERLE提高了5 ~ 15 dB,对语音编码失真的平均ERLE提高了2 dB左右。在这两种噪音情况下,可以预期减少5分贝或更多的不对准。该技术被证明对真实的声学回波也是有益的。在声学回波被加性噪声形式的线性失真或语音编码形式的非线性失真破坏时,该方法被视为改进现有AEC算法的一种可行技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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