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Automatic detection of speaker state: Lexical, prosodic, and phonetic approaches to level-of-interest and intoxication classification

机译:自动检测说话者状态:兴趣,醉酒分类的词汇,韵律和语音方法

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摘要

Traditional studies of speaker state focus primarily upon one-stage classification techniques using standard acoustic features. In this article, we investigate multiple novel features and approaches to two recent tasks in speaker state detection: level-of-interest (LOI) detection and intoxication detection. In the task of LOI prediction, we propose a novel Discriminative TFIDF feature to capture important lexical information and a novel Prosodic Event detection approach using AuToBI; we combine these with acoustic features for this task using a new multilevel multistream prediction feedback and similarity-based hierarchical fusion learning approach. Our experimental results outperform published results of all systems in the 2010 Interspeech Paralinguistic Challenge - Affect Subchallenge. In the intoxication detection task, we evaluate the performance of Prosodic Event-based, phone duration-based, phonotactic, and phonetic-spectral based approaches, finding that a combination of the phonotactic and phonetic-spectral approaches achieve significant improvement over the 2011 Interspeech Speaker State Challenge - Intoxication Subchallenge baseline. We discuss our results using these new features and approaches and their implications for future research.
机译:传统的扬声器状态研究主要集中在使用标准声学特征的一级分类技术上。在本文中,我们研究了说话人状态检测中两项近期任务的多种新颖功能和方法:兴趣水平(LOI)检测和中毒检测。在LOI预测的任务中,我们提出了一种新颖的区分性TFIDF功能来捕获重要的词法信息,并提出了一种使用AuToBI的新颖的韵律事件检测方法。我们使用新的多级多流预测反馈和基于相似度的分层融合学习方法,将这些功能与声学功能结合在一起。我们的实验结果优于2010年Interspeech副语言挑战-Affect Subchallenge中所有系统的结果。在中毒检测任务中,我们评估了基于韵律事件,基于电话时长,基于音韵学和基于语音频谱的方法的性能,发现与2011年Interspeech演讲者相比,音韵学和语音光谱方法的组合取得了显着改善状态挑战-中毒子挑战基线。我们使用这些新功能和方法来讨论我们的结果,以及它们对未来研究的意义。

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