Concurrent Speaker Detection: A multi-microphone Transformer-Based Approach
Audio and Speech Processing
2024-03-12 v1
Abstract
We present a deep-learning approach for the task of Concurrent Speaker Detection (CSD) using a modified transformer model. Our model is designed to handle multi-microphone data but can also work in the single-microphone case. The method can classify audio segments into one of three classes: 1) no speech activity (noise only), 2) only a single speaker is active, and 3) more than one speaker is active. We incorporate a Cost-Sensitive (CS) loss and a confidence calibration to the training procedure. The approach is evaluated using three real-world databases: AMI, AliMeeting, and CHiME 5, demonstrating an improvement over existing approaches.
Keywords
Cite
@article{arxiv.2403.06856,
title = {Concurrent Speaker Detection: A multi-microphone Transformer-Based Approach},
author = {Amit Eliav and Sharon Gannot},
journal= {arXiv preprint arXiv:2403.06856},
year = {2024}
}
Comments
5 pages, 6 tables, 2 figures