Dual supervised learning for non-native speech recognition

Volume: 2019, Issue: 1
Published: Jan 14, 2019
Abstract
Current automatic speech recognition (ASR) systems achieve over 90–95% accuracy, depending on the methodology applied and datasets used. However, the level of accuracy decreases significantly when the same ASR system is used by a non-native speaker of the language to be recognized. At the same time, the volume of labeled datasets of non-native speech samples is extremely limited both in size and in the number of existing languages. This problem...
Paper Details
Title
Dual supervised learning for non-native speech recognition
Published Date
Jan 14, 2019
Volume
2019
Issue
1
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