Detecting depression from facial actions and vocal prosody

J. Cohn, T. S. Kruez, I. Matthews, Ying Yang, Minh Hoai Nguyen, M. T. Padilla, Feng Zhou, F. D. L. Torre
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引用次数: 415

Abstract

Current methods of assessing psychopathology depend almost entirely on verbal report (clinical interview or questionnaire) of patients, their family, or caregivers. They lack systematic and efficient ways of incorporating behavioral observations that are strong indicators of psychological disorder, much of which may occur outside the awareness of either individual. We compared clinical diagnosis of major depression with automatically measured facial actions and vocal prosody in patients undergoing treatment for depression. Manual FACS coding, active appearance modeling (AAM) and pitch extraction were used to measure facial and vocal expression. Classifiers using leave-one-out validation were SVM for FACS and for AAM and logistic regression for voice. Both face and voice demonstrated moderate concurrent validity with depression. Accuracy in detecting depression was 88% for manual FACS and 79% for AAM. Accuracy for vocal prosody was 79%. These findings suggest the feasibility of automatic detection of depression, raise new issues in automated facial image analysis and machine learning, and have exciting implications for clinical theory and practice.
从面部动作和声音韵律中检测抑郁
目前评估精神病理学的方法几乎完全依赖于口头报告(临床访谈或问卷调查)的病人,他们的家人,或照顾者。他们缺乏系统和有效的方法来结合行为观察,这些行为观察是心理障碍的有力指标,其中许多可能发生在个人意识之外。我们比较了重度抑郁症的临床诊断与接受抑郁症治疗的患者面部动作和语音韵律的自动测量。使用手动FACS编码、主动外观建模(AAM)和音高提取来测量面部和声音表情。使用留一验证的分类器是FACS的SVM和语音的AAM和逻辑回归。面部和声音均表现出适度的抑郁并发效度。手工FACS检测抑郁症的准确率为88%,AAM为79%。声乐韵律的准确率为79%。这些发现提示了抑郁症自动检测的可行性,提出了自动面部图像分析和机器学习的新问题,并对临床理论和实践具有令人兴奋的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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