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首页> 外文期刊>IEEE transactions on multimedia >Automatic Depression Analysis Using Dynamic Facial Appearance Descriptor and Dirichlet Process Fisher Encoding
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Automatic Depression Analysis Using Dynamic Facial Appearance Descriptor and Dirichlet Process Fisher Encoding

机译:使用动态面部外观描述符和Dirichlet过程Fisher编码的自动抑郁分析

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Depression causes mood disorders with noticeable problems in day-to-day activities. Current methods of assessing depression depend almost entirely on clinical interviews or questionnaires. They lack systematic and efficient ways of incorporating behavioral observations that are strong indicators of a psychological disorder. To help clinicians effectively and efficiently diagnose depression severity, automated systems, using objective and quantifiable data for depression assessment, are being developed. This paper presents a framework toward estimating a clinical depression-specific score, namely the Beck Depression Inventory-II (BDI-II) score, based on the analysis of facial expressions features. To extract facial dynamic features, we propose a novel dynamic feature descriptor denoted as median robust local binary patterns from three orthogonal planes (MRLBP-TOP), which can capture both the microstructure and macrostructure of facial appearance and dynamics. To aggregate the MRLBP-TOP over an image sequence, we propose a variant to the Fisher vector (FV) encoding scheme, denoted as the Dirichlet process FV (DPFV). DPFV adopts Dirichlet process Gaussian mixture models (DPGMM) to automatically learn the number of GMM mixtures and model parameters. Experimental results on the AVEC2013 and AVEC2014 depression databases have demonstrated the effectiveness of the proposed method.
机译:抑郁症会导致情绪异常,在日常活动中会出现明显的问题。当前评估抑郁症的方法几乎完全取决于临床访谈或问卷调查。他们缺乏系统和有效的方法来整合行为观察,这些行为观察是心理障碍的有力指标。为了帮助临床医生有效,有效地诊断抑郁症的严重程度,正在开发使用客观,可量化的数据进行抑郁症评估的自动化系统。本文基于对面部表情特征的分析,提出了一种评估临床抑郁特异性评分的框架,即贝克抑郁量表II(BDI-II)评分。要提取面部动态特征,我们提出了一种新颖的动态特征描述符,表示为来自三个正交平面(MRLBP-TOP)的中值鲁棒局部二进制模式,它可以捕获面部外观和动力学的微观结构和宏观结构。为了在图像序列上聚合MRLBP-TOP,我们提出了Fisher编码(FV)编码方案的一种变体,称为Dirichlet过程FV(DPFV)。 DPFV采用Dirichlet过程高斯混合模型(DPGMM)自动学习GMM混合的数量和模型参数。在AVEC2013和AVEC2014抑郁症数据库上的实验结果证明了该方法的有效性。

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