Abstract

The proportion of individuals with depression has rapidly increased along with the growth of the global population. Depression has been the currently most prevalent mental health disorder. An effective depression recognition system is especially crucial for the early detection of potential depression risk. A depression-related dataset is also critical while evaluating the system for depression or potential depression risk detection. Due to the sensitive nature of clinical data, availability and scale of such datasets are scarce. To our knowledge, there are few extensively practical depression datasets for the Chinese population. In this study, we first create a large-scale dataset by asking subjects to perform five mood-elicitation tasks. After each task, subjects' audio and video are collected, including 3D information (depth information) of facial expressions via a Kinect. The constructed dataset is from a real environment, i.e., several psychiatric hospitals, and has a specific scale. Then we propose a novel approach for potential depression risk recognition based on two kinds of different deep belief network (DBN) models. One model extracts 2D appearance features from facial images collected by an optical camera, while the other model extracts 3D dynamic features from 3D facial points collected by a Kinect. The final decision result comes from the combination of the two models. Finally, we evaluate all proposed deep models on our built dataset. The experimental results demonstrate that (1) our proposed method is able to identify patients with potential depression risk; (2) the recognition performance of combined 2D and 3D features model outperforms using either 2D or 3D features model only; (3) the performance of depression recognition is higher in the positive and negative emotional stimulus, and females' recognition rate is generally higher than that for males. Meanwhile, we compare the performance with other methods on the same dataset. The experimental results show that our integrated 2D and 3D features DBN is more reasonable and universal than other methods, and the experimental paradigm designed for depression is reasonable and practical.

Highlights

  • According to the World Health Organization (WHO), more than 350 million people of all ages suffer from depression disorder globally (Reddy, 2012)

  • We propose a novel approach for depressive prone patients recognition based on two kinds of different deep belief network (DBN) models combination, one of which extracts 2D appearance features from facial images collected by optical cameras, the other learns the facial motion from 3D facial points and facial action units (AUs) collected by a Kinect

  • We build two different deep networks: 2D static appearance deep network (2D-SADN), which is used to extract the static appearance features from images based on DBN

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Summary

Introduction

According to the World Health Organization (WHO), more than 350 million people of all ages suffer from depression disorder globally (Reddy, 2012). Depression (depressive disorder or clinical depression) is one of the most severe but prevalent mental disorders globally. Depression can induce severe impairments that interfere with or limit one’s ability to conduct major life activities for at least 2 weeks. During at least 2 weeks, there is either a depressed mood or a loss of interest or pleasure, as well as at least four other symptoms that reflect a change in functioning, such as problems with sleep, eating, energy, concentration, self-image, or recurrent thoughts of death or suicide. Depression can occur at any age, and cases in children and adolescents have been reported. Because of its harmfulness and recent prevalence, depression has drawn increasing attention from many related communities

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