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Fast Sparse Adaptive Filtering Algorithms for Acoustic Echo Cancellation

机译:用于声学回声消除的快速稀疏自适应滤波算法

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In this communication, fast adaptive algorithms are suggested to enhance the performance of the Fast- Normalized Least Mean Square (FNLMS) algorithm in Acoustic Echo Cancellation (AEC) applications with a sparse system. We propose two new algorithms, the first one is the Zero-Attracting (ZA) FNLMS which gives a better performance when the unknown system is extremely sparse. However, by decreasing the sparsity of the system, the Mean Square Error (MSE) got significantly worse than that of the FNLMS algorithm. To overcome this issue, another algorithm named Reweighted Zero-Attracting FNLMS (RZA-FNLMS) algorithm is proposed in this paper. Simulation results with stationary and non-stationary inputs under different Signal to Noise Ratio (SNR) values of additive noise and change in the impulse response lengths show an improvement in the convergence speed.
机译:在该通信中,建议快速自适应算法来增强具有稀疏系统的声学回声消除(AEC)应用中的快速标准化最小均方(FNLMS)算法的性能。我们提出了两个新的算法,第一个是零吸引(ZA)FNLMS,当未知系统极其稀疏时,提供更好的性能。然而,通过减少系统的稀疏性,平均方误差(MSE)显着差而不是FNLMS算法的误差。为了克服这个问题,本文提出了另一种名为重量零吸引的FNLMS(RZA-FNLMS)算法的另一种算法。仿真结果具有静止和非静止输入的不同信号与噪声比(SNR)的附加噪声值(SNR)值和脉冲响应长度的变化显示出收敛速度的提高。

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