Bilingual Speech Recognition by Estimating Speaker Geometry from Video Data
Abstract
Speech recognition is very challenging in student learning environments that are characterized by significant cross-talk and background noise. To address this problem, we present a bilingual speech recognition system that uses an interactive video analysis system to estimate the 3D speaker geometry for realistic audio simulations. We demonstrate the use of our system in generating a complex audio dataset that contains significant cross-talk and background noise that approximate real-life classroom recordings. We then test our proposed system with real-life recordings. In terms of the distance of the speakers from the microphone, our interactive video analysis system obtained a better average error rate of 10.83% compared to 33.12% for a baseline approach. Our proposed system gave an accuracy of 27.92% that is 1.5% better than Google Speech-to-text on the same dataset. In terms of 9 important keywords, our approach gave an average sensitivity of 38% compared to 24% for Google Speech-to-text, while both methods maintained high average specificity of 90% and 92%. On average, sensitivity improved from 24% to 38% for our proposed approach. On the other hand, specificity remained high for both methods (90% to 92%).
Cite
@article{arxiv.2112.13463,
title = {Bilingual Speech Recognition by Estimating Speaker Geometry from Video Data},
author = {Luis Sanchez Tapia and Antonio Gomez and Mario Esparza and Venkatesh Jatla and Marios Pattichis and Sylvia Celedón-Pattichis and Carlos LópezLeiva},
journal= {arXiv preprint arXiv:2112.13463},
year = {2021}
}
Comments
11 pages, 6 figures