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Deep Learning for Depression Recognition with Audiovisual Cues: A Review

Authors :
He, Lang
Niu, Mingyue
Tiwari, Prayag
Marttinen, Pekka
Su, Rui
Jiang, Jiewei
Guo, Chenguang
Wang, Hongyu
Ding, Songtao
Wang, Zhongmin
Dang, Wei
Pan, Xiaoying
Publication Year :
2021

Abstract

With the acceleration of the pace of work and life, people have to face more and more pressure, which increases the possibility of suffering from depression. However, many patients may fail to get a timely diagnosis due to the serious imbalance in the doctor-patient ratio in the world. Promisingly, physiological and psychological studies have indicated some differences in speech and facial expression between patients with depression and healthy individuals. Consequently, to improve current medical care, many scholars have used deep learning to extract a representation of depression cues in audio and video for automatic depression detection. To sort out and summarize these works, this review introduces the databases and describes objective markers for automatic depression estimation (ADE). Furthermore, we review the deep learning methods for automatic depression detection to extract the representation of depression from audio and video. Finally, this paper discusses challenges and promising directions related to automatic diagnosing of depression using deep learning technologies.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2106.00610
Document Type :
Working Paper