首页> 外文会议>IEEE International Conference on Acoustics, Speech, and Signal Processing >AUTOMATIC SYLLABLE STRESS DETECTION USING PROSODIC FEATURES FOR PRONUNCIATION EVALUATION OF LANGUAGE LEARNERS
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AUTOMATIC SYLLABLE STRESS DETECTION USING PROSODIC FEATURES FOR PRONUNCIATION EVALUATION OF LANGUAGE LEARNERS

机译:自动音节应力检测使用韵律学习者的发音评价

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A robust language learning system, designed to help students practice a foreign language along with a machine tutor, must provide meaningful feedback to users by isolating and localizing their pronunciation errors. This paper presents a new technique for automatic syllable stress detection that is tailored for language-learning purposes. Our method, which uses basic prosodic features and others related to the fundamental frequency slope and RMS energy range, is at least as accurate as an expert human listener, but requires no human supervision other than a pre-defined dictionary of expected lexical stress patterns for all words in the system's vocabulary. Optimal feature choices exhibited an 87-89% accuracy compared with human-tagged stress labels, exceeding the inter-human agreement commonly held to be about 80%.
机译:一种强大的语言学习系统,旨在帮助学生与机器导师一起练习外语,必须通过隔离和本地化其发音错误来为用户提供有意义的反馈。本文介绍了一种新的自动音节应力检测技术,用于针对语言学习目的而定制的。我们使用基本韵律特征和与基本频率坡度和RMS能量范围有关的方法,至少是作为专家的人类听众的准确性,但不需要除了预定义的词汇应力模式词典之外的人类监督系统词汇中的所有单词。与人工标记的应力标签相比,最佳特征选择表现出87-89%的准确性,超过人际间协议,通常持有约80%。

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