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Rapid Identification of a Sparse Impulse Response Using an Adaptive Algorithm in the Haar Domain

机译:在Haar域中使用自适应算法快速识别稀疏脉冲响应

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摘要

This paper proposes a fast convergence adaptive algorithm for identifying a sparse impulse response that is rich in spectral content. A sparse impulse response is referred here as a discrete time impulse response that has a large number of zero or near zero coefficients. The basic idea for rapid identification is to automatically determine the locations of the nonzero impulse response coefficients for their adaptation and eliminate the unnecessary adaptation of zero coefficients. The proposed method, which is called the Haar-Basis algorithm, employs a transform approach by modeling the sparse impulse response in the Haar domain. The Haar transform has many basis sets and each of them contains basis vectors that span the entire time domain range. This special nature of the Haar transform allows for the selection of one small subset of adaptive filter coefficients whose basis vectors span the entire range of the impulse response. These coefficients are adapted at the beginning and are then used subsequently to identify, from the hierarchical structure of the Haar transform, the rest of the filter coefficients that must be adapted to correctly model the unknown sparse impulse response. The consequence is avoiding adaptation of many zero coefficients, leading to a dramatic improvement in either convergence speed or steady state excess mean-square error (EMSE), while requiring no a priori knowledge such as the number of nonzero coefficients in the unknown sparse impulse response. The proposed algorithm has been tested with a variety of unknown sparse systems using both white noise input and colored input whose spectrum closely resembles that of speech. Simulation results show that the new approach provides promising results.
机译:该文提出了一种快速收敛自适应算法,用于识别具有丰富频谱内容的稀疏脉冲响应。稀疏脉冲响应在这里称为具有大量零系数或接近零系数的离散时间脉冲响应。快速识别的基本思想是自动确定非零脉冲响应系数的位置以进行适配,并消除零系数的不必要适配。所提出的方法称为Haar-Basis算法,它通过对Haar域中的稀疏脉冲响应进行建模来采用变换方法。Haar 变换有许多基集,每个基集都包含跨越整个时域范围的基向量。Haar变换的这种特殊性质允许选择自适应滤波器系数的一小部分,其基矢量跨越脉冲响应的整个范围。这些系数在开始时进行调整,然后用于从 Haar 变换的分层结构中识别其余的滤波器系数,这些系数必须进行调整,以正确模拟未知的稀疏脉冲响应。其结果是避免了许多零系数的适应,从而显著提高了收敛速度或稳态超均方误差 (EMSE),同时不需要先验知识,例如未知稀疏脉冲响应中非零系数的数量。所提出的算法已经使用各种未知稀疏系统进行了测试,该系统使用白噪声输入和彩色输入,其频谱与语音非常相似。仿真结果表明,新方法取得了较好的结果。

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