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A Benchmarking on Cloud based Speech-To-Text Services for French Speech and Background Noise Effect

Authors :
Xu, Binbin
Tao, Chongyang
Feng, Zidu
Raqui, Youssef
Ranwez, Sylvie
Publication Year :
2021

Abstract

This study presents a large scale benchmarking on cloud based Speech-To-Text systems: {Google Cloud Speech-To-Text}, {Microsoft Azure Cognitive Services}, {Amazon Transcribe}, {IBM Watson Speech to Text}. For each systems, 40158 clean and noisy speech files about 101 hours are tested. Effect of background noise on STT quality is also evaluated with 5 different Signal-to-noise ratios from 40dB to 0dB. Results showed that {Microsoft Azure} provided lowest transcription error rate $9.09\%$ on clean speech, with high robustness to noisy environment. {Google Cloud} and {Amazon Transcribe} gave similar performance, but the latter is very limited for time-constraint usage. Though {IBM Watson} could work correctly in quiet conditions, it is highly sensible to noisy speech which could strongly limit its application in real life situations.<br />Comment: 6th National Conference on Practical Applications of Artificial Intelligence, 2021, Bordeaux, France

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2105.03409
Document Type :
Working Paper