Title :
Network topology selection for distributed speech enhancement in wireless acoustic sensor networks
Author :
Szurley, J. ; Bertrand, Alexander ; Moerman, I. ; Moonen, Marc
Author_Institution :
Dept. of Electr. Eng., KU Leuven, Leuven, Belgium
Abstract :
A wireless acoustic sensor network is envisaged where each node estimates a locally observed speech signal that has been corrupted by additive noise. The nodes perform noise reduction by means of the distributed adaptive node-specific signal estimation algorithm in a tree topology (T-DANSE). The T-DANSE algorithm inherently relies on a network that has been pruned to a tree topology where a single node has been designated as the root node. We will demonstrate that, due to the data-driven flow of the T-DANSE algorithm and unavoidable errors in the estimation of certain second-order statistics, the selection of the root node and the pruning of an adhoc network to a tree topology play an important role in the overall performance of the speech enhancement algorithm in terms of noise reduction as well as input-output delay. With this in mind we introduce the concept of eigenvector centrality with a weighted adjacency matrix that can be used to select a root node, as well as to prune an ad-hoc network to a specific tree topology that yields good speech enhancement performance when applying the T-DANSE algorithm.
Keywords :
acoustic noise; ad hoc networks; eigenvalues and eigenfunctions; noise abatement; speech enhancement; telecommunication network topology; trees (mathematics); wireless sensor networks; T-DANSE algorithm; ad-hoc network; additive noise; data-driven flow; distributed adaptive node-specific signal estimation algorithm; distributed speech enhancement; eigenvector centrality; input-output delay; network topology selection; noise reduction; root node; second-order statistics; speech enhancement algorithm; speech signal; tree topology; weighted adjacency matrix; wireless acoustic sensor networks; Ad hoc networks; Estimation; Microphones; Network topology; Noise; Speech; Topology; Distributed signal estimation; eigenvector centrality; network topology; wireless acoustic sensor networks;
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2013 Proceedings of the 21st European
Conference_Location :
Marrakech