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Characterizing the State of Apathy with Facial Expression and Motion Analysis

机译:用面部表情和运动分析表征冷漠状态

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Reduced emotional response, lack of motivation, and limited social interaction comprise the major symptoms of apathy. Current methods for apathy diagnosis require the patient's presence in a clinic, and time consuming clinical interviews and questionnaires involving medical personnel, which are costly and logistically inconvenient for patients and clinical staff, hindering among other large scale diagnostics. In this paper we introduce a novel machine learning framework to classify apathetic and non-apathetic patients based on analysis of facial dynamics, entailing both emotion and facial movement. Our approach caters to the challenging setting of current apathy assessment interviews, which include short video clips with wide face pose variations, very low-intensity expressions, and insignificant inter-class variations. We test our algorithm on a dataset consisting of 90 video sequences acquired from 45 subjects and obtained an accuracy of 84% in apathy classification. Based on extensive experiments, we show that the fusion of emotion and facial local motion produces the best feature set for apathy classification. In addition, we train regression models to predict the clinical scores related to the mental state examination (MMSE) and the neuropsychiatric apathy inventory (NPI) using the motion and emotion features. Our results suggest that the performance can be further improved by appending the predicted clinical scores to the video-based feature representation.
机译:减少情绪反应,缺乏动机,社会互动有限包括冷漠的主要症状。目前的冷漠诊断方法需要患者在诊所的存在,并且耗时涉及医务人员的临床访谈和问卷,这对患者和临床人员来说是昂贵和逻辑上的不方便,在其他大规模诊断中阻碍。在本文中,我们介绍了一种新颖的机器学习框架,以基于面部动态的分析来分类肺精和非嗜肺患者,引起情绪和面部运动。我们的方法迎合了当前冷漠评估访谈的具有挑战性,包括具有宽面姿态变化,非常低强度表达和微不足道的级别变化的短视频剪辑。我们在由40个受试者获取的90个视频序列组成的数据集上测试我们的算法,并在冷漠分类中获得84%的准确性。基于广泛的实验,我们表明情感和面部局部运动的融合会为冷漠分类产生最佳功能。此外,我们培训回归模型,以预测使用运动和情感特征的精神状态检查(MMSE)和神经精神病毒库存(NPI)的临床评分。我们的结果表明,通过将预测的临床分数附加到基于视频的特征表示,可以进一步提高性能。

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