4.6 Article

Diagnosis of Depressive Disorder Model on Facial Expression Based on Fast R-CNN

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DIAGNOSTICS
卷 12, 期 2, 页码 -

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MDPI
DOI: 10.3390/diagnostics12020317

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fast R-CNN; depressive disorder; deep learning; diagnosis; facial expression

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This study proposes a model based on artificial intelligence to assist in the diagnosis of depressive disorder, which can quickly identify depressive disorder through smartphones, provide intervention data, and design a model to assist in the diagnosis of depressive disorder through deep learning methods.
This study examines related literature to propose a model based on artificial intelligence (AI), that can assist in the diagnosis of depressive disorder. Depressive disorder can be diagnosed through a self-report questionnaire, but it is necessary to check the mood and confirm the consistency of subjective and objective descriptions. Smartphone-based assistance in diagnosing depressive disorders can quickly lead to their identification and provide data for intervention provision. Through fast region-based convolutional neural networks (R-CNN), a deep learning method that recognizes vector-based information, a model to assist in the diagnosis of depressive disorder can be devised by checking the position change of the eyes and lips, and guessing emotions based on accumulated photos of the participants who will repeatedly participate in the diagnosis of depressive disorder.

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