English

Neural network-based virtual microphone estimation with virtual microphone and beamformer-level multi-task loss

Audio and Speech Processing 2023-11-21 v1

Abstract

Array processing performance depends on the number of microphones available. Virtual microphone estimation (VME) has been proposed to increase the number of microphone signals artificially. Neural network-based VME (NN-VME) trains an NN with a VM-level loss to predict a signal at a microphone location that is available during training but not at inference. However, this training objective may not be optimal for a specific array processing back-end, such as beamforming. An alternative approach is to use a training objective considering the array-processing back-end, such as a loss on the beamformer output. This approach may generate signals optimal for beamforming but not physically grounded. To combine the advantages of both approaches, this paper proposes a multi-task loss for NN-VME that combines both VM-level and beamformer-level losses. We evaluate the proposed multi-task NN-VME on multi-talker underdetermined conditions and show that it achieves a 33.1 % relative WER improvement compared to using only real microphones and 10.8 % compared to using a prior NN-VME approach.

Keywords

Cite

@article{arxiv.2311.11595,
  title  = {Neural network-based virtual microphone estimation with virtual microphone and beamformer-level multi-task loss},
  author = {Hanako Segawa and Tsubasa Ochiai and Marc Delcroix and Tomohiro Nakatani and Rintaro Ikeshita and Shoko Araki and Takeshi Yamada and Shoji Makino},
  journal= {arXiv preprint arXiv:2311.11595},
  year   = {2023}
}

Comments

5 pages, 2 figures, 1 table

R2 v1 2026-06-28T13:25:47.573Z