Automatic recognition of depression based on audio and video: A review

Meng-Meng Han,Xing-Yun Li,Xin-Yu Yi,Yun-Shao Zheng, Wei-Li Xia, Ya-Fei Liu,Qing-Xiang Wang

WORLD JOURNAL OF PSYCHIATRY(2024)

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Abstract
Depression is a common mental health disorder. With current depression detection methods, specialized physicians often engage in conversations and physiological examinations based on standardized scales as auxiliary measures for depression assessment. Non-biological markers-typically classified as verbal or non-verbal and deemed crucial evaluation criteria for depression-have not been effectively utilized. Specialized physicians usually require extensive training and experience to capture changes in these features. Advancements in deep learning technology have provided technical support for capturing non-biological markers. Several researchers have proposed automatic depression estimation (ADE) systems based on sounds and videos to assist physicians in capturing these features and conducting depression screening. This article summarizes commonly used public datasets and recent research on audio- and video-based ADE based on three perspectives: Datasets, deficiencies in existing research, and future development directions.
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Key words
Depression recognition,Deep learning,Automatic depression estimation System,Audio processing,Image processing,Feature fusion,Future development
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