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Sparsity Aware Hybrid Adaptive Algorithms for Modeling Acoustic Paths

机译:用于声路径建模的稀疏感知混合自适应算法

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Modeling of acoustic paths may be considered as a sparse system identification problem, owing to the sparse nature of the many acoustic impulse responses. Adaptive algorithms based on the concept of proportionate filtering as well as the ones based on zero attraction has been widely used for sparse system identification. A re-weighted zero attraction least mean square (RZA-LMS) algorithm is a popular sparse adaptive algorithm and is effective for modeling sparse as well as non-sparse systems. However, it offers a slow initial convergence, which will slow down the system identification process. The improved proportionate normalized least mean square (IPNLMS) algorithm offers a fast initial convergence and is effective for sparse system identification. But the steady state mean square error offered by the algorithm is not as effective as that offered by RZA-LMS algorithm. In an endeavour to achieve sparse system identification with improved initial convergence speed and enhanced steady state mean square error, this paper proposes a modeling scheme based on a convex combination of IPNLMS and RZA-LMS algorithms. The new scheme has been shown to be effective in modeling sparse systems including an acoustic feedback path in a behind the ear digital hearing aid.
机译:由于许多声脉冲响应的稀疏性,声路径的建模可被视为稀疏系统识别问题。基于比例滤波概念的自适应算法以及基于零吸引的自适应算法已被广泛用于稀疏系统识别。重新加权零吸引最小均方(RZA-LMS)算法是一种流行的稀疏自适应算法,对于建模稀疏和非稀疏系统均有效。但是,它提供了缓慢的初始收敛,这将减慢系统识别过程。改进的比例归一化最小均方(IPNLMS)算法提供了快速的初始收敛性,并且对于稀疏系统识别非常有效。但是该算法提供的稳态均方误差不如RZA-LMS算法提供的稳定。为了通过提高初始收敛速度和提高稳态均方误差来实现稀疏系统识别,本文提出了一种基于IPNLMS和RZA-LMS算法凸组合的建模方案。新方案已显示出在建模稀疏系统(包括在耳朵数字助听器后方的声音反馈路径)有效。

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