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Predicting the Sixteen Personality Factors (16PF) of an individual by analyzing facial features

机译:通过分析面部特征预测个人的十六个人格因子(16PF)

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We propose a novel three-layered neural network-based architecture for predicting the Sixteen Personality Factors from facial features analyzed using Facial Action Coding System. The proposed architecture is built on three layers: a base layer where the facial features are extracted from each video frame using a multi-state face model and the intensity levels of 27 Action Units (AUs) are computed, an intermediary level where an AU activity map is built containing all AUs’ intensity levels fetched from the base layer in a frame-by-frame manner, and a top layer consisting of 16 feed-forward neural networks trained via backpropagation which analyze the patterns in the AU activity map and compute scores from 1 to 10, predicting each of the 16 personality traits. We show that the proposed architecture predicts with an accuracy of over 80%: warmth, emotional stability, liveliness, social boldness, sensitivity, vigilance, and tension. We also show there is a significant relationship between the emotions elicited to the analyzed subjects and high prediction accuracy obtained for each of the 16 personality traits as well as notable correlations between distinct sets of AUs present at high-intensity levels and increased personality trait prediction accuracy. The system converges to a stable result in no more than 1?min, making it faster and more practical than the Sixteen Personality Factors Questionnaire and suitable for real-time monitoring of people’s personality traits.
机译:我们提出了一种新颖的基于三层神经网络的体系结构,用于根据使用面部动作编码系统分析的面部特征预测十六种人格因素。所提出的体系结构基于三层:基础层,其中使用多状态面部模型从每个视频帧中提取面部特征,并计算27个动作单位(AU)的强度级别;中间层,其中AU活动绘制地图,其中包含从基础层以逐帧方式获取的所有AU强度水平,以及一个顶层,该顶层由16个通过反向传播训练的前馈神经网络组成,这些神经网络分析AU活动图中的模式并计算得分从1到10,分别预测16个人格特质。我们表明,所提出的体系结构预测的准确性超过80%:温暖,情绪稳定,活泼,社交勇气,敏感性,警惕性和紧张感。我们还表明,激发被分析对象的情绪与针对16个人格特质中的每一个获得的高预测准确性之间存在显着的关系,以及在高强度水平下存在的不同AU集合之间的显着相关性以及人格特质预测准确性的提高。该系统可以在不超过1分钟的时间内收敛到稳定的结果,这使其比《十六种个性因素问卷》更快,更实用,并且适合实时监控人们的个性特征。

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