使用实时和社交媒体数据的抑郁症检测系统

G.C.J. Jayasinghe, I.P.M.A. Shamika, G.A.I.P Dissanayake, R.M.I.A Ranaweera, P. Bandara
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引用次数: 0

摘要

本研究的主要目的是测量参与者的抑郁水平。精神科医生将提供指导,以了解参数。终端系统已实施,以测量它与预先设计的问卷集的现场会议。在会议期间,通过音频和视频的方式记录与会者的行为。长期抑郁水平测量将分析参与者在一个月内的社交媒体行为。卷积神经网络(CNN)和自然语言处理(NLP)被用来分析视频、音频和文本数据。分析结果;采用贝克抑郁量表(BDI II)。测量输出结果的准确性与测量结果一样高,因为它已经单独分析了子组件,然后预测到一个结果。
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Depression Detection System Using Real-Time and Social Media Data
The main objective of this study is to measure the depression level of the participants. The guidance will be provided by the psychiatrist to understand the parameters. The end system has been implemented to measure it with a live session with pre-designed questionnaire set. During the session time, the behavior of the participant has been captured through audio and video method. The long-term depression level measurement will be analyzing the social media behavior of the participant within a month. The Convolution Neural Network (CNN) and Natural Language Processing (NLP) are using to analyze the video, audio and text data. To analyze the results; The Beck Depression Inventory (BDI II) scale will be utilized. The accuracy of the output results measured as high as it has been individually analyzed the subcomponents and then predict to a one result.
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