Distributed node-specific block-diagonal LCMV beamforming in wireless acoustic sensor networks

•We propose a distributed node-specific block-diagonal LCMV (DNBD-LCMV) beamformer in WASNs.•We show the motivation of the DNBD-LCMV and analyze its convergence rate, computational complexity, and communication bandwidth.•We show the robustness of the DNBD-LCMV to the estimation errors of acoustic t...

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Bibliographic Details
Published inSignal processing Vol. 185; p. 108085
Main Authors Guo, Xinwei, Yuan, Minmin, Ke, Yuxuan, Zheng, Chengshi, Li, Xiaodong
Format Journal Article
LanguageEnglish
Published Elsevier B.V 01.08.2021
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Summary:•We propose a distributed node-specific block-diagonal LCMV (DNBD-LCMV) beamformer in WASNs.•We show the motivation of the DNBD-LCMV and analyze its convergence rate, computational complexity, and communication bandwidth.•We show the robustness of the DNBD-LCMV to the estimation errors of acoustic transform function and voice activity detector. This paper derives the analytical solution of a novel distributed node-specific block-diagonal linearly constrained minimum variance beamformer from the centralized linearly constrained minimum variance (LCMV) beamformer when considering that the noise covariance matrix is block-diagonal. To further reduce the computational complexity of the proposed beamformer, the Sherman–Morrison–Woodbury formula is introduced to compute the inversion of the noise covariance matrix at each node. By doing so, we can compute the lower-dimensional exchanged signals between different nodes, where the optimal LCMV beamformer is still available at each node as if each node is to transmit its all raw sensor signal observations. The proposed beamformer is fully distributable without imposing restrictions on the underlying network topology or scaling computational complexity, i.e., there is no increase in the per-node complexity when new nodes are added to the networks. Compared with state-of-the-art distributed node-specific algorithms that are often time-recursive, the proposed beamformer exactly solves the LCMV beamformer optimally frame by frame, which has much lower complexity and is more robust to acoustic transfer function estimation error and voice activity detector error. Numerous experimental results are presented to validate the effectiveness of the proposed beamformer.
ISSN:0165-1684
1872-7557
DOI:10.1016/j.sigpro.2021.108085