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Catching Elusive Depression via Facial Micro-Expression Recognition

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arxiv 2307.15862 v1 pith:3N4ZIU5F submitted 2023-07-29 cs.CV cs.LG

Catching Elusive Depression via Facial Micro-Expression Recognition

classification cs.CV cs.LG
keywords depressionfacialconcealedemotionsfmesproposerecognitionaddress
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Depression is a common mental health disorder that can cause consequential symptoms with continuously depressed mood that leads to emotional distress. One category of depression is Concealed Depression, where patients intentionally or unintentionally hide their genuine emotions through exterior optimism, thereby complicating and delaying diagnosis and treatment and leading to unexpected suicides. In this paper, we propose to diagnose concealed depression by using facial micro-expressions (FMEs) to detect and recognize underlying true emotions. However, the extremely low intensity and subtle nature of FMEs make their recognition a tough task. We propose a facial landmark-based Region-of-Interest (ROI) approach to address the challenge, and describe a low-cost and privacy-preserving solution that enables self-diagnosis using portable mobile devices in a personal setting (e.g., at home). We present results and findings that validate our method, and discuss other technical challenges and future directions in applying such techniques to real clinical settings.

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