English

Extending GCC-PHAT using Shift Equivariant Neural Networks

Audio and Speech Processing 2022-09-22 v1 Machine Learning Sound

Abstract

Speaker localization using microphone arrays depends on accurate time delay estimation techniques. For decades, methods based on the generalized cross correlation with phase transform (GCC-PHAT) have been widely adopted for this purpose. Recently, the GCC-PHAT has also been used to provide input features to neural networks in order to remove the effects of noise and reverberation, but at the cost of losing theoretical guarantees in noise-free conditions. We propose a novel approach to extending the GCC-PHAT, where the received signals are filtered using a shift equivariant neural network that preserves the timing information contained in the signals. By extensive experiments we show that our model consistently reduces the error of the GCC-PHAT in adverse environments, with guarantees of exact time delay recovery in ideal conditions.

Keywords

Cite

@article{arxiv.2208.04654,
  title  = {Extending GCC-PHAT using Shift Equivariant Neural Networks},
  author = {Axel Berg and Mark O'Connor and Kalle Åström and Magnus Oskarsson},
  journal= {arXiv preprint arXiv:2208.04654},
  year   = {2022}
}

Comments

Proceedings of INTERSPEECH

R2 v1 2026-06-25T01:35:32.842Z