基于广义结构子带分解的自适应滤波新结构

E.V. Papoulis, T. Stathaki
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引用次数: 0

摘要

从广义结构子带分解(GSSD)的观点出发,解决了系统辨识问题。提出了一种系统识别结构(SIS),该结构在有色输入环境中提供了显著的计算节省和显著的收敛率(CR)提高,用于识别未知系统的广义多相分量(GPC)。为了使多相分量的识别可行,对输入施加了稀疏性约束。然后对所提出的结构进行修改,以放松对其输入施加的限制,并使其适合于诸如声学回声消除之类的应用。其结果是一个有效的(相对于其计算复杂性)自适应过滤结构,在关注降低复杂性的情况下提供了一个有吸引力的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New structures for adaptive filtering based on the generalised structural subband decomposition
The system identification (SI) problem is addressed from the viewpoint of the generalised structural subband decomposition (GSSD). A system identification structure (SIS) that provides significant computational savings and a substantial increase in the convergence rate (CR) in coloured input environments is presented for the identification of the generalised polyphase components (GPC) of the unknown system. Sparsity constraints are imposed on the input for the identification of polyphase components to be feasible. The proposed structure is then modified so as to relax the imposed constraints on its input and render it appropriate for applications such as the acoustic echo cancellation. The result is an efficient-with respect its computational complexity-adaptive filtering structure that provides an attractive solution in situations where the concern is the reduction in the complexity.
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