Machine Learning Techniques for Automatic Depression Assessment

A. Maridaki, A. Pampouchidou, K. Marias, M. Tsiknakis
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引用次数: 7

Abstract

Depression is one of the most common mood disorder that is inherently related to emotions, involving bad mood, low self-esteem and loss of interest in normal pleasurable activities. The aim of this work is to develop a framework based on the dataset provided by AVEC'14 for depression assessment. The proposed work presents two different motion representation methods: a) Gabor Motion History Image (GMHI), and b) Motion History Image (MHI). Several combinations of appearance-based low level features are extracted from both motion representations. These features were further combined with statistically derived features, and used for training and testing with several machine learning techniques. The proposed approach reached an F1 score of 81.93%, both for MHI and GMHI, with SVM classifier. The achieved performance is comparable to state-of-the-art approaches, while manages to outperform several others. Apart from accomplishing a competitive performance, the proposed work provides an exhaustive exploration of different combinations of the investigated motion representations, descriptors, and classifiers.
自动抑郁评估的机器学习技术
抑郁症是一种最常见的情绪障碍,它与情绪有着内在的联系,包括坏情绪、低自尊和对正常愉快活动失去兴趣。这项工作的目的是基于AVEC'14提供的数据集开发一个框架,用于抑郁症评估。提出了两种不同的运动表示方法:a) Gabor运动历史图像(GMHI)和b)运动历史图像(MHI)。从两种运动表示中提取了几种基于外观的低级特征组合。这些特征与统计导出的特征进一步结合,并用于几种机器学习技术的训练和测试。使用SVM分类器,该方法对MHI和GMHI的F1得分均达到81.93%。实现的性能可与最先进的方法相媲美,同时设法优于其他几种方法。除了完成竞争性表现之外,所提出的工作还提供了对所研究的运动表示、描述符和分类器的不同组合的详尽探索。
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