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An Investigation of Emotional Speech in Depression Classification

机译:抑郁症分类情绪言论的调查

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Assessing depression via speech characteristics is a growing area of interest in quantitative mental health research with a view to a clinical mental health assessment tool. As a mood disorder, depression induces changes in response to emotional stimuli, which motivates this investigation into the relationship between emotion and depression affected speech. This paper investigates how emotional information expressed in speech (i.e. arousal, valence, dominance) contributes to the classification of minimally depressed and moderately-severely depressed individuals. Experiments based on a subset of the AVEC 2014 database show that manual emotion ratings alone are discriminative of depression and combining rating-based emotion features with acoustic features improves classification between mild and severe depression. Emotion-based data selection is also shown to provide improvements in depression classification and a range of threshold methods are explored. Finally, the experiments presented demonstrate that automatically predicted emotion ratings can be incorporated into a fully automatic depression classification to produce a 5% accuracy improvement over an acoustic-only baseline system.
机译:通过语音特征评估抑郁症是对临床心理健康评估工具的定量心理健康研究的兴趣不断增长。作为一种情绪障碍,抑郁症诱导对情绪刺激的反应变化,这激励了这种调查,这对情绪和抑郁症之间的关系影响了言论。本文调查了语音中表达的情绪信息(即唤醒,价值,占优势)有助于对最小抑郁和中度严重抑郁的个体的分类。基于AVEC 2014数据库的子集的实验表明,单独的手动情感评级是抑郁症的判别,并将基于额定的情感特征与声学特征相结合,提高了轻度和严重抑郁症之间的分类。还显示基于情感的数据选择来提供抑郁分类的改进,并探讨了一系列阈值方法。最后,提出的实验表明,可以将自动预测的情绪评级纳入全自动抑郁分类,以产生在仅声学的基线系统上的5%精度改善。

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