Artificial Intelligence for Suicide Assessment using Audiovisual Cues: A
Review
- URL: http://arxiv.org/abs/2201.09130v1
- Date: Sat, 22 Jan 2022 21:17:19 GMT
- Title: Artificial Intelligence for Suicide Assessment using Audiovisual Cues: A
Review
- Authors: Sahraoui Dhelim, Liming Chen, Huansheng Ning and Chris Nugent
- Abstract summary: Death by suicide is the seventh of the leading death cause worldwide.
Recent advancement in Artificial Intelligence (AI) has created a promising opportunity to revolutionize suicide risk assessment.
- Score: 5.492115747362348
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Death by suicide is the seventh of the leading death cause worldwide. The
recent advancement in Artificial Intelligence (AI), specifically AI application
in image and voice processing, has created a promising opportunity to
revolutionize suicide risk assessment. Subsequently, we have witnessed
fast-growing literature of researches that applies AI to extract audiovisual
non-verbal cues for mental illness assessment. However, the majority of the
recent works focus on depression, despite the evident difference between
depression signs and suicidal behavior non-verbal cues. In this paper, we
review the recent works that study suicide ideation and suicide behavior
detection through audiovisual feature analysis, mainly suicidal voice/speech
acoustic features analysis and suicidal visual cues.
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