4.7 Review

Deep learning for depression recognition with audiovisual cues: A review

Journal

INFORMATION FUSION
Volume 80, Issue -, Pages 56-86

Publisher

ELSEVIER
DOI: 10.1016/j.inffus.2021.10.012

Keywords

Affective computing; Depression; Deep learning; Automatic depression estimation; Review

Funding

  1. Shaanxi Provincial Social Sci-ence Foundation [2021K015]
  2. Shaanxi Provincial Natural Science Foundation [2021JQ-824]
  3. Special Construction Fund for Key Disciplines of Shaanxi Provincial Higher Education
  4. Shaanxi Higher Education Association Fund for the Prevention and Control of Novel Coronavirus Pneumonia [XGH20201]
  5. Shaanxi Provin-cial Public Scientific Quality Promotion Fund for Emergency Pop-ularization of COVID-19 [2020PSL (Y) 040]
  6. Academy of Finland [336033, 315896]
  7. Business Finland [884/31/2018]
  8. EU [101016775]

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As the pace of work and life accelerates, people are facing increasing pressure that can lead to depression. Deep Learning is being utilized to automatically detect depression by extracting cues from audio and video data. Research in automatic depression detection using DL faces challenges but shows promising directions.
With the acceleration of the pace of work and life, people are facing more and more pressure, which increases the probability 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. A promising development is that physiological and psychological studies have found some differences in speech and facial expression between patients with depression and healthy individuals. Consequently, to improve current medical care, Deep Learning (DL) has been used to extract a representation of depression cues from audio and video for automatic depression detection. To classify and summarize such research, we introduce the databases and describe objective markers for automatic depression estimation. We also review the DL methods for automatic detection of depression to extract a representation of depression from audio and video. Lastly, we discuss challenges and promising directions related to the automatic diagnoses of depression using DL.

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