Local Second-Order Gradient Cross Pattern for Automatic Depression Detection

Mingyue Niu, J. Tao, Bin Liu
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引用次数: 8

Abstract

Depression is a psychiatric disorder that seriously affects people's work and life. At present, the development of the automatic depression detection technology has become the focus of many researchers due to the serious imbalance of doctor-patient ratio. Physiological studies have revealed that there are differences in facial activity between normal and depressed individuals, so some works has been done to detect depression by extracting facial features. However, these works are limited in capturing the subtle changes. For these reasons, this paper proposes a novel local pattern named Local Second-Order Gradient Cross Pattern (LSOGCP) to extract the subtle facial dynamics in videos to improve the accuracy of depression detection. In particular, we firstly obtain LSOGCP feature through high-order gradient and cross coding scheme to characterize the detailed texture of each frame. Then LSOGCP histograms from three orthogonal planes (TOP) are generated to form the video representation denoted as LSOGCP-TOP. Finally, a hierarchical method of between-group classification and within-group regression is employed to predict the score of depression severity. Experiments are conducted on two publicly available databases i.e. AVEC2013 and AVEC2014. The results demonstrate that our proposed method achieves better performance than the previous algorithms.
局部二阶梯度交叉模式的自动降压检测
抑郁症是一种严重影响人们工作和生活的精神疾病。目前,由于医患比例严重失衡,抑郁症自动检测技术的发展成为众多研究者关注的焦点。生理学研究表明,正常人和抑郁症患者的面部活动存在差异,因此人们已经做了一些通过提取面部特征来检测抑郁症的工作。然而,这些作品在捕捉细微变化方面是有限的。为此,本文提出了一种新的局部二阶梯度交叉模式(local Second-Order Gradient Cross pattern, LSOGCP)来提取视频中细微的面部动态特征,以提高抑郁症检测的准确性。特别是,我们首先通过高阶梯度和交叉编码方案获得LSOGCP特征来表征每帧的细节纹理。然后从三个正交平面(TOP)生成LSOGCP直方图,形成视频表示,记为LSOGCP-TOP。最后,采用组间分类和组内回归的分层方法预测抑郁严重程度得分。实验在AVEC2013和AVEC2014两个公开的数据库上进行。结果表明,本文提出的方法比以往的算法具有更好的性能。
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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