Automatic Depression Scale Prediction using Facial Expression Dynamics and Regression

AVEC '14 Pub Date : 2014-11-07 DOI:10.1145/2661806.2661812
Asim Jan, H. Meng, Y. F. A. Gaus, Fan Zhang, Saeed Turabzadeh
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引用次数: 80

Abstract

Depression is a state of low mood and aversion to activity that can affect a person's thoughts, behavior, feelings and sense of well-being. In such a low mood, both the facial expression and voice appear different from the ones in normal states. In this paper, an automatic system is proposed to predict the scales of Beck Depression Inventory from naturalistic facial expression of the patients with depression. Firstly, features are extracted from corresponding video and audio signals to represent characteristics of facial and vocal expression under depression. Secondly, dynamic features generation method is proposed in the extracted video feature space based on the idea of Motion History Histogram (MHH) for 2-D video motion extraction. Thirdly, Partial Least Squares (PLS) and Linear regression are applied to learn the relationship between the dynamic features and depression scales using training data, and then to predict the depression scale for unseen ones. Finally, decision level fusion was done for combining predictions from both video and audio modalities. The proposed approach is evaluated on the AVEC2014 dataset and the experimental results demonstrate its effectiveness.
基于面部表情动态和回归的抑郁量表自动预测
抑郁症是一种情绪低落、厌恶活动的状态,会影响一个人的思想、行为、感觉和幸福感。在这种情绪低落的情况下,面部表情和声音都与正常状态有所不同。本文提出了一种基于抑郁症患者自然面部表情的贝克抑郁量表自动预测系统。首先,从相应的视频和音频信号中提取特征,代表抑郁状态下的面部和声音表情特征;其次,基于二维视频运动提取的运动历史直方图(MHH)思想,在提取的视频特征空间中提出动态特征生成方法;第三,运用偏最小二乘和线性回归方法,利用训练数据学习动态特征与抑郁量表之间的关系,对未见特征进行抑郁量表预测。最后,进行决策级融合,以结合视频和音频模式的预测。在AVEC2014数据集上对该方法进行了验证,实验结果证明了该方法的有效性。
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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