人机交互中情感维度与抑郁的多模态预测

AVEC '14 Pub Date : 2014-11-07 DOI:10.1145/2661806.2661810
Rahul Gupta, Nikos Malandrakis, Bo Xiao, T. Guha, Maarten Van Segbroeck, M. Black, A. Potamianos, Shrikanth S. Narayanan
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引用次数: 94

摘要

抑郁症是最常见的情绪障碍之一。通过强大的建模和跟踪与抑郁症相关的复杂行为线索(例如,言语、语言、面部表情、头部运动、肢体语言),技术有可能帮助筛查和治疗抑郁症患者。同样,稳健的情感识别是另一个挑战,它将从建模这些线索中受益。音频/视觉情感挑战(AVEC)旨在理解这两种现象,并通过几种方式建立它们与可观察线索的相关性。在本文中,我们使用多模态信号处理方法来解决这两个问题,使用来自人机交互的数据。我们开发了预测抑郁水平和情感维度的独立系统,试验了几种方法来组合多模态信息。提出的抑郁预测系统使用基于音频、视觉和语言线索的特征选择方法来预测每个会话的抑郁评分。同样,我们使用多个系统在音频和视觉线索上进行训练,以预测连续时间的情感维度。我们的情感识别系统在逐帧推理过程中考虑上下文,并对来自视听系统的结果进行线性融合。对于这两个问题,我们提出的系统都优于基于视频特征的基线系统。作为这项工作的一部分,我们分析了每种模态在预测目标变量中所起的作用,并提供了分析见解。
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Multimodal Prediction of Affective Dimensions and Depression in Human-Computer Interactions
Depression is one of the most common mood disorders. Technology has the potential to assist in screening and treating people with depression by robustly modeling and tracking the complex behavioral cues associated with the disorder (e.g., speech, language, facial expressions, head movement, body language). Similarly, robust affect recognition is another challenge which stands to benefit from modeling such cues. The Audio/Visual Emotion Challenge (AVEC) aims toward understanding the two phenomena and modeling their correlation with observable cues across several modalities. In this paper, we use multimodal signal processing methodologies to address the two problems using data from human-computer interactions. We develop separate systems for predicting depression levels and affective dimensions, experimenting with several methods for combining the multimodal information. The proposed depression prediction system uses a feature selection approach based on audio, visual, and linguistic cues to predict depression scores for each session. Similarly, we use multiple systems trained on audio and visual cues to predict the affective dimensions in continuous-time. Our affect recognition system accounts for context during the frame-wise inference and performs a linear fusion of outcomes from the audio-visual systems. For both problems, our proposed systems outperform the video-feature based baseline systems. As part of this work, we analyze the role played by each modality in predicting the target variable and provide analytical insights.
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Multimodal Prediction of Affective Dimensions and Depression in Human-Computer Interactions Automatic Depression Scale Prediction using Facial Expression Dynamics and Regression Depression Estimation Using Audiovisual Features and Fisher Vector Encoding The SRI AVEC-2014 Evaluation System Emotion Recognition and Depression Diagnosis by Acoustic and Visual Features: A Multimodal Approach
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