Advancing VAD Systems Based on Multi-Task Learning with Improved Model Structures
Abstract
In a speech recognition system, voice activity detection (VAD) is a crucial frontend module. Addressing the issues of poor noise robustness in traditional binary VAD systems based on DFSMN, the paper further proposes semantic VAD based on multi-task learning with improved models for real-time and offline systems, to meet specific application requirements. Evaluations on internal datasets show that, compared to the real-time VAD system based on DFSMN, the real-time semantic VAD system based on RWKV achieves relative decreases in CER of 7.0\%, DCF of 26.1\% and relative improvement in NRR of 19.2\%. Similarly, when compared to the offline VAD system based on DFSMN, the offline VAD system based on SAN-M demonstrates relative decreases in CER of 4.4\%, DCF of 18.6\% and relative improvement in NRR of 3.5\%.
Cite
@article{arxiv.2312.14860,
title = {Advancing VAD Systems Based on Multi-Task Learning with Improved Model Structures},
author = {Lingyun Zuo and Keyu An and Shiliang Zhang and Zhijie Yan},
journal= {arXiv preprint arXiv:2312.14860},
year = {2023}
}