访谈对话中口语水平评分的多模态特征分析

Mao Saeki, Yoichi Matsuyama, Satoshi Kobashikawa, Tetsuji Ogawa, Tetsunori Kobayashi
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引用次数: 7

摘要

本文分析了在非母语人士在线对话任务中,不同模式对口语水平自动评分的有效性。语言学习者的会话能力可以通过使用多模态行为,如语音内容、韵律和视觉线索来评估。虽然词汇和声学特征已经得到了广泛的研究,但对面部表情和眼睛注视等视觉特征的使用还没有研究。为了构建一个使用多模态特征的口语水平自动评分系统,我们首先构建了210名日本英语学习者的在线视频采访数据集,并对他们的口语水平进行了注释。然后,我们研究了两种结合视觉特征的方法,并比较了每种方式的有效性。结果表明,与手工特征相比,深度神经网络的端到端方法与人类评分的相关性更高。模态在词汇、声学和视觉特征的顺序上是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Multimodal Features for Speaking Proficiency Scoring in an Interview Dialogue
This paper analyzes the effectiveness of different modalities in automated speaking proficiency scoring in an online dialogue task of non-native speakers. Conversational competence of a language learner can be assessed through the use of multimodal behaviors such as speech content, prosody, and visual cues. Although lexical and acoustic features have been widely studied, there has been no study on the usage of visual features, such as facial expressions and eye gaze. To build an automated speaking proficiency scoring system using multi-modal features, we first constructed an online video interview dataset of 210 Japanese English-learners with annotations of their speaking proficiency. We then examined two approaches for incorporating visual features and compared the effectiveness of each modality. Results show the end-to-end approach with deep neural networks achieves a higher correlation with human scoring than one with handcrafted features. Modalities are effective in the order of lexical, acoustic, and visual features.
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