首页> 外文会议>IEEE International Conference on Acoustics, Speech and Signal Processing >EFFICIENT LEARNING OF ARTICULATORY MODELS BASED ON MULTI-LABEL TRAINING AND LABEL CORRECTION FOR PRONUNCIATION LEARNING
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EFFICIENT LEARNING OF ARTICULATORY MODELS BASED ON MULTI-LABEL TRAINING AND LABEL CORRECTION FOR PRONUNCIATION LEARNING

机译:基于多标签培训和标签校正对发音学习的关节模型的高效学习

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摘要

Articulatory feedback is effective for computer-assisted pronunciation training (CAPT) systems. This paper investigates efficient model learning methods for providing articulatory information to language learners. We first propose an articulatory attribute modeling method based on a multi-label learning scheme. Then, the models are further enhanced with a simple and effective training label correction method. These proposed methods are evaluated in three tasks: native attribute recognition, pronunciation error detection of non-native speech, and non-native speech recognition. Experimental results show that proposed methods significantly improve the conventional deep neural network (DNN) based articulatory models.
机译:明晰的反馈对于计算机辅助发音培训(CAPT)系统是有效的。本文调查了向语言学习者提供明晰度信息的有效模型学习方法。我们首先提出了一种基于多标签学习方案的化学属性建模方法。然后,通过简单有效的训练标签校正方法进一步增强了模型。这些提出的方法是三项任务(非本机语音的发音错误)和非本机语音识别的三个任务评估。实验结果表明,提出的方法显着改善了基于常规的深神经网络(DNN)的关节模型。

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