抑郁症的检测和分析:评估工具和技术的综合调查

Mohamed Rahul, Deena S, Shylesh R, L. B
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引用次数: 0

摘要

临床抑郁症是伴随年龄增长而出现的一种普遍而严重的情绪障碍。由于悲伤对精神有影响,病人很难告诉医生他们的情况。通常使用的诊断工具包括对症状的问卷调查或访谈式评估,以及使用实验室测试来查看抑郁症状是否与其他严重疾病共存。近年来,由于卷积神经网络和机器学习的发展,人们创造了多种方法来帮助诊断抑郁症。作为一种多因素的疾病,抑郁症的诊断应采用多模式的方法进行有效的检查。为了使用情绪识别来分析抑郁症,已经创建了一些单模态和多模态方法。本研究综述了这些方法。与结合一个或多个特征的多模态方法相比,单模态方法只考虑面部表情、声音等的一个属性来识别抑郁症。本研究还讨论了许多检测语音抑郁的技术,包括频谱、声学和fisher向量算法,以及从语音中提取人脸特征的方法。这项调查包括目前对情绪识别的研究,该研究利用听觉和视觉信息来识别抑郁症。调查表明,在抑郁症检测研究中,多模态方法和深度学习技术优于单模态方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting and Analyzing Depression: A Comprehensive Survey of Assessment Tools and Techniques
Nowadays, clinical depression is a prevalent yet severe mood disorder that occurs with aging. Since sadness has an influence on the mind, it can be hard for the patient to tell the doctor about their situation. Typically utilized diagnostic tools include questionnaires or interview-style evaluations of the symptoms, and also using laboratory tests to see if the depressive symptoms coexist with other severe diseases. In recent years, a variety of approaches have been created to aid the diagnosis of depression, thanks to the development using convolutional neural networks with machine learning. Being a multifactorial condition, depression should be diagnosed using a multimodal approach for an efficient examination. In order to analyze depression using emotion recognition, a number have been created for both unimodal and multimodal approaches. This study reviews these approaches. When compared to multimodal approaches, which combine one or more features, the unimodal approach takes into account just one attribute from the range of facial expressions, voice, etc. for depression identification. This study also discusses many techniques for detecting depression in speech, including spectral, acoustic, and fisher vector algorithms, as well as approaches for extracting face characteristics from speech. The survey includes the current research on emotion recognition that uses auditory and visual information to identify depression. The survey demonstrates that multimodal methods and deep learning techniques outperform unimodal approaches in the study of depression for depression detection.
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