Microphone Subset Selection for MVDR Beamformer Based Noise Reduction
Jie Zhang, Sundeep Prabhakar Chepuri, Richard C. Hendriks, and Richard, Heusdens

TL;DR
This paper introduces methods for selecting optimal microphone subsets in wireless sensor networks to improve noise reduction with MVDR beamformers, reducing transmission costs while maintaining performance.
Contribution
It proposes both a convex optimization-based and a greedy data-driven approach for microphone subset selection in MVDR beamforming, enhancing efficiency and adaptability.
Findings
Greedy algorithm performance converges to model-driven method.
Proposed methods reduce transmission costs significantly.
Achieves desired noise reduction performance with fewer sensors.
Abstract
In large-scale wireless acoustic sensor networks (WASNs), many of the sensors will only have a marginal contribution to a certain estimation task. Involving all sensors increases the energy budget unnecessarily and decreases the lifetime of the WASN. Using microphone subset selection, also termed as sensor selection, the most informative sensors can be chosen from a set of candidate sensors to achieve a prescribed inference performance. In this paper, we consider microphone subset selection for minimum variance distortionless response (MVDR) beamformer based noise reduction. The best subset of sensors is determined by minimizing the transmission cost while constraining the output noise power (or signal-to-noise ratio). Assuming the statistical information on correlation matrices of the sensor measurements is available, the sensor selection problem for this model-driven scheme is first…
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Taxonomy
TopicsSpeech and Audio Processing · Indoor and Outdoor Localization Technologies · Advanced Adaptive Filtering Techniques
