IEICE Transactions on Information and Systems
Online ISSN : 1745-1361
Print ISSN : 0916-8532
Regular Section
Committee-Based Active Learning for Speech Recognition
Yuzo HAMANAKAKoichi SHINODATakuya TSUTAOKASadaoki FURUITadashi EMORITakafumi KOSHINAKA
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2011 Volume E94.D Issue 10 Pages 2015-2023

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Abstract
We propose a committee-based method of active learning for large vocabulary continuous speech recognition. Multiple recognizers are trained in this approach, and the recognition results obtained from these are used for selecting utterances. Those utterances whose recognition results differ the most among recognizers are selected and transcribed. Progressive alignment and voting entropy are used to measure the degree of disagreement among recognizers on the recognition result. Our method was evaluated by using 191-hour speech data in the Corpus of Spontaneous Japanese. It proved to be significantly better than random selection. It only required 63h of data to achieve a word accuracy of 74%, while standard training (i.e., random selection) required 103h of data. It also proved to be significantly better than conventional uncertainty sampling using word posterior probabilities.
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© 2011 The Institute of Electronics, Information and Communication Engineers
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