Multimodal depression recognition with dynamic visual and audio cues

Lang He, D. Jiang, H. Sahli
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引用次数: 38

Abstract

In this paper, we present our system design for audio visual multi-modal depression recognition. To improve the estimation accuracy of the Beck Depression Inventory (BDI) score, besides the Low Level Descriptors (LLD) features and the Local Gabor Binary Pattern-Three Orthogonal Planes (LGBP-TOP) features provided by the 2014 Audio/Visual Emotion Challenge and Workshop (AVEC2014), we extract extra features to capture key behavioural changes associated with depression. From audio we extract the speaking rate, and from video, the head pose features, the Space-Temporal Interesting Point (STIP) features, and local kinematic features via the Divergence-Curl-Shear descriptors. These features describe body movements, and spatio-temporal changes within the image sequence. We also consider global dynamic features, obtained using motion history histogram (MHH), bag of words (BOW) features and vector of local aggregated descriptors (VLAD). To capture the complementary information within the used features, we evaluate two fusion systems - the feature fusion scheme, and the model fusion scheme via local linear regression (LLR). Experiments are carried out on the training set and development set of the Depression Recognition Sub-Challenge (DSC) of AVEC2014, we obtain root mean square error (RMSE) of 7.6697, and mean absolute error (MAE) of 6.1683 on the development set, which are better or comparable with the state of the art results of the AVEC2014 challenge.
基于动态视觉和音频线索的多模态抑郁症识别
在本文中,我们提出了一个音视频多模态抑郁症识别系统的设计。为了提高贝克抑郁量表(BDI)评分的估计精度,除了2014年音频/视觉情绪挑战与研讨会(AVEC2014)提供的低水平描述符(LLD)特征和局部Gabor二元模式-三正交平面(LGBP-TOP)特征外,我们提取了额外的特征来捕捉与抑郁相关的关键行为变化。我们从音频中提取说话速率,从视频中提取头部姿态特征、时空兴趣点(STIP)特征和局部运动特征,通过发散-卷曲-剪切描述子。这些特征描述了身体运动和图像序列中的时空变化。我们还考虑了使用运动历史直方图(MHH)、词袋(BOW)特征和局部聚合描述符向量(VLAD)获得的全局动态特征。为了捕获所使用特征中的互补信息,我们评估了两种融合系统-特征融合方案和基于局部线性回归(LLR)的模型融合方案。在AVEC2014抑郁症识别子挑战(DSC)的训练集和开发集上进行了实验,开发集上的均方根误差(RMSE)为7.6697,平均绝对误差(MAE)为6.1683,优于或可与AVEC2014挑战的最新结果相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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