Multi-Task Based Mispronunciation Detection of Children Speech Using Multi-Lingual Information

Linxuan Wei, Wenwei Dong, Binghuai Lin, Jinsong Zhang
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引用次数: 2

Abstract

In developing a Computer-Aided Pronunciation Training (CAPT) system for Chinese ESL (English as a Second Language) children, we suffered from insufficient task-specific data. To address this issue, we propose to utilize first language (L1) and second language (L2) knowledge from both adult and children data through multitask-based transfer learning according to Speech Learning Model (SLM). Experimental set-up includes the TDNN acoustic modelling using the following training data: 70 hours of English speech by American Children (AC), 100 hours by American Adults (AA), 5 hours of Chinese speech by Chinese Children (CC), and 89 hours by Chinese Adults (CA). Testing data includes 2 hours of ESL speech by Chinese children. Experimental results showed that the inclusion of AA data brought about 13% relative Detection Error Rate (DER) reduction compared to AC only. Further inclusion of CC and CA data through L1 transfer learning brought about a total of 21% relative improvement in DER. These results suggested the proposed method is effective in mitigating insufficient data problem.
基于多语言信息的多任务儿童语音错误检测
在为中国ESL(英语作为第二语言)儿童开发计算机辅助发音训练(CAPT)系统时,我们遭受了任务特定数据不足的困扰。为了解决这一问题,我们建议根据语音学习模型(SLM),通过基于多任务的迁移学习,利用来自成人和儿童数据的第一语言(L1)和第二语言(L2)知识。实验设置包括TDNN声学建模,使用以下训练数据:美国儿童(AC) 70小时的英语演讲,美国成年人(AA) 100小时的英语演讲,中国儿童(CC) 5小时的中文演讲,中国成年人(CA) 89小时的中文演讲。测试数据包括中国儿童2小时的ESL演讲。实验结果表明,与仅包含AC数据相比,包含AA数据可使相对检测错误率(DER)降低13%。通过L1迁移学习进一步纳入CC和CA数据,在DER方面总共带来了21%的相对改善。结果表明,该方法可以有效地缓解数据不足问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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