Sorry, you need to enable JavaScript to visit this website.

A Distributed Algorithm For Robust LCMV Beamforming

Citation Author(s):
W. Bastiaan Kleijn, Richard Heusdens
Submitted by:
Thomas Sherson
Last updated:
23 March 2016 - 12:38am
Document Type:
Presentation Slides
Document Year:
2016
Event:
Presenters:
Thomas Sherson
Paper Code:
2663
 

These slides were produced to complement the lecture presentation delivered at ICASSP 2016 for our paper on distributed beamforming. Please find the abstract below.

"In this paper we propose a distributed reformulation of the linearly constrained minimum variance (LCMV) beamformer for use in acoustic wireless sensor networks. The proposed distributed minimum variance (DMV) algorithm, for which we demonstrate implementations for both cyclic and acyclic networks, allows the optimal beamformer output to be computed at each node without the need for sharing raw data within the network. By exploiting the low rank structure of estimated covariance matrices in time-varying noise fields, the algorithm can also provide a reduction in the total amount of data transmitted during computation when compared to centralised solutions. This is particularly true when multiple microphones are used per node. We also compare the performance of DMV with state of the art distributed beamformers and demonstrate that it achieves greater improvements in SNR in dynamic noise fields with similar transmission costs."

up
0 users have voted: