Death by suicide is the seventh leading death cause worldwide. The recent advancement in Artificial Intelligence (AI), specifically AI applications in image and voice processing, has created a promising opportunity to revolutionize suicide risk assessment. Subsequently, we have witnessed fast-growing literature of research 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 symptoms and suicidal behavior and non-verbal cues. This paper reviews 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. Automatic suicide assessment is a promising research direction that is still in the early stages. Accordingly, there is a lack of large datasets that can be used to train machine learning and deep learning models proven to be effective in other, similar tasks.
翻译:自杀死亡是全世界第七大死亡原因。最近人工智能(AI)的进步,特别是人工智能在图像和语音处理方面的应用,为自杀风险评估的革命性变革创造了一个充满希望的机会。随后,我们看到了迅速增长的研究文献,这些文献运用人工智能提取非语言的视听信号进行精神疾病评估。然而,尽管抑郁症症状与自杀行为和非语言信号之间存在明显差异,但最近大部分工作的重点是抑郁症。本文回顾了最近通过视听特征分析,主要是自杀性声音/语音声学特征分析和自杀性视觉提示,研究自杀性思想和自杀行为发现的工作。自动自杀评估是一个充满希望的研究方向,目前仍处于早期阶段。因此,缺少大型数据集可用于培训机器学习和经证明在其他类似任务中行之有效的深层学习模式。