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Variable tap-length non-parametric variable step-size NLMS adaptive filtering algorithm for acoustic echo cancellation

机译:可变抽头长度非参数变量步骤尺寸NLMS自适应滤波算法用于声学回声消除

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摘要

In teleconferencing and communication systems, the use of Loudspeaker Enclosure Microphone device leads to undesired echoes. To reduce these echoes, an acoustic echo canceller is used. In this paper, we propose a Variable Tap-length Non-Parametric Variable Step-Size NLMS (VT-NPVSS-NLMS) algorithm based on adaptive filtering for acoustic echo cancellation. The step-size is adjusted without the need for tuning too many parameters, using only the square of the average autocorrelation of a priori and a posteriori estimates of error. Moreover, the tap-length is varied to facilitate a high convergence speed and a small bias in tap-length from the optimum length. Hence, such a combination of the variable step-size algorithm with a variable tap-length provides faster convergence and reduced steady-state mean square error. The performance of the proposed algorithm is evaluated in terms of steady-state and transient mean square error. The advantages of the proposed algorithm, as compared to other adaptive algorithms, are presented using simulation results. From the results, we infer that for the VT-NPVSS-NLMS, the convergence speed is increased and the steady-state mean square error is reduced when compared with the conventional NLMS and the variable-step-size NLMS algorithm with a fixed tap-length. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在电话会议和通信系统中,使用扬声器外壳麦克风装置导致不需要的回波。为了减少这些回波,使用声学回声消除器。在本文中,我们提出了一种基于自适应滤波的可变抽头长度非参数可变步长NLMS(VT-NPVSS-NLMS)算法进行声学回声消除。在不需要调整太多参数的情况下调整阶梯大小,仅使用先验的平均自相关的平均值和错误的误差估计值。此外,可以改变分接速度以促进高收敛速度和从最佳长度的轻敲长度的小偏置。因此,具有可变抽头长度的可变步长算法的这种组合提供了更快的收敛性和降低的稳态均方误差。在稳态和瞬态均方误差方面评估所提出的算法的性能。与其他自适应算法相比,所提出的算法的优点是使用仿真结果呈现。从结果中,我们推断出于VT-NPVSS-NLMS,随着传统NLMS和具有固定挖掘的可变步长NLMS算法的比较时,会收敛速度增加并且稳态均方误差减小 - 长度。 (c)2019 Elsevier Ltd.保留所有权利。

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