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A new adaptive solution based on joint acoustic noise and echo cancellation for hands-free systems

机译:基于联合声噪声和回声消除的免提系统新的自适应解决方案

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摘要

In this paper, we address the problem of joint acoustic noise and echo cancellations for hands-free systems. The problem of acoustic echo cancelation (AEC) in the presence of background noise is a real challenge for any actual system. In this paper, we propose a new system that combines both processes, i.e. ANC and AEC. In our approach, we propose a two-stages procedure as follows: in the first stage, we propose to use the forward blind source separation (FBSS) structure to cancel the background noise components that is superimposed to the acoustic echo signal in the same environment, this FBSS structure uses the two-channel normalized least mean square (TC-NLMS) adaptive algorithm to cancel the background noise from the primary signal. In the second step, we propose to use an AEC system based on a single channel NLMS (SC-NLMS) algorithm to efficiently suppress the acoustic echo signal. This new combination between the FBSS and the AEC system allows reducing the acoustic echo signal to lower mean square values (MSE) in the permanent regime, this behavior will not be possible without FBSS. The performance properties of the proposed algorithm in such environment (i.e. presence of background plus acoustic echo signals in the same time) is evaluated with competitive algorithm with various objective criteria (ERLE, SegSNR, and GainMSE).
机译:在本文中,我们解决了免提系统的联合声噪声和回声消除问题。在存在背景噪声的情况下,声学回声消除(AEC)问题对于任何实际系统都是一个真正的挑战。在本文中,我们提出了一个结合了两个过程的新系统,即ANC和AEC。在我们的方法中,我们提出了以下两个阶段的过程:在第一阶段,我们提出使用前向盲源分离(FBSS)结构来消除在相同环境中叠加到声回波信号上的背景噪声分量,此FBSS结构使用两通道归一化最小均方(TC-NLMS)自适应算法来消除来自主信号的背景噪声。在第二步中,我们建议使用基于单通道NLMS(SC-NLMS)算法的AEC系统来有效地抑制声回波信号。 FBSS和AEC系统之间的这种新组合允许在永久状态下将回声信号降低到较低的均方值(MSE),如果没有FBSS,这种行为将是不可能的。使用具有各种客观标准(ERLE,SegSNR和GainMSE)的竞争算法,可以评估所提出算法在这种环境下的性能(即同时存在背景和声学回声信号)。

著录项

  • 来源
    《International journal of speech technology》 |2019年第2期|407-420|共14页
  • 作者单位

    Laboratory of Signal Processing and Imaging (LATSI), University of Blida 1, Route de Soumaa, B.P. 270, Blida 09000, Algeria;

    Laboratory of Signal Processing and Imaging (LATSI), University of Blida 1, Route de Soumaa, B.P. 270, Blida 09000, Algeria,Detection, Information and Communication (DIC) Laboratory, University of Blida 1, Route de Soumaa, B.P. 270, Blida 09000, Algeria;

    Detection, Information and Communication (DIC) Laboratory, University of Blida 1, Route de Soumaa, B.P. 270, Blida 09000, Algeria;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    SCNLMS; SSTW, SDIA; SegSNR; Acoustic noise canceller; Speech enhancement; FBSS;

    机译:SCNLMS;STW;SDIA;SegSNR;噪音消除器;语音增强;FBSS;

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