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Performance study of three different sparse adaptive filtering algorithms for echo cancellation in long acoustic impulse responses

机译:三种不同稀疏自适应滤波算法的绩效研究,用于长声冲击响应的回声消除

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In this paper, the problem of echo cancellation in long acoustic impulse responses (AIRs) is highlighted. Three of the mostly-used recent NLMS-based sparse adaptive filtering algorithms are presented; and their performances in the context of acoustic echo cancellation (AEC) are studied and compared. The algorithms of interest include the improved proportionate normalized least mean square (IPNLMS), its sparseness-controlled (SC) upgrade (SC-IPNLMS) as well as the so-called variable-step-size reweighted zero-attractor NLMS (VSS-RZA-NLMS) which is based on the compressive sensing (CS) framework. Series of simulations were carried out both in synthetic and real different-sparseness long acoustic impulse responses with stationary and non-stationary inputs in order to effectively analyze, evaluate and compare the strengths and the weaknesses of these algorithms in terms of convergence speed, steady-state performance and computational complexity.
机译:在本文中,突出了长声脉冲响应(空气)的回声消除问题。提出了三个主要使用的最近基于NLMS的稀疏自适应滤波算法;研究并比较了声学回声消除(AEC)的情况下的表演。感兴趣的算法包括改进的比例标准化最小均线(IPNLMS),其稀疏控制(SC)升级(SC-IPNLMS)以及所谓的变量 - 步长重新重量零吸引子NLMS(VSS-RZA -NLMS)基于压缩感测(CS)框架。在合成和实际不同 - 稀疏性长声脉冲响应中进行系列型模拟,以便有效分析,评估和比较这些算法的优势和比较这些算法的弱点,稳定 - 状态性能和计算复杂性。

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