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Semi-feature Level Fusion for Bimodal Affect Regression Based on Facial and Bodily Expressions

机译:基于面部和身体表达的双峰性影响的半特征水平融合

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Automatic emotion recognition has been widely studied and applied to various computer vision tasks (e.g. health monitoring, driver state surveillance, personalized learning, and security monitoring). As revealed by recent psychological and behavioral research, facial expressions are good in communicating categorical emotions (e.g. happy, sad, surprise, etc.), while bodily expressions could contribute more to the perception of dimensional emotional states (e.g. arousal and valence). In this paper, we propose a semi-feature level fusion framework that incorporates affective information of both the facial and bodily modalities to draw a more reliable interpretation of users' emotional states in a valence–arousal space. The Genetic Algorithm is also applied to conduct automatic feature optimization. We subsequently propose an ensemble regression model to robustly predict users' continuous affective dimensions in the valence–arousal space. The empirical findings indicate that by combining the optimal discriminative bodily features and the derived Action Unit intensities as inputs, the proposed system with adaptive ensemble regressors achieves the best performance for the regression of both the arousal and valence dimensions.
机译:自动情感识别已被广泛研究并应用于各种计算机视觉任务(例如,健康监测,驾驶员状态监控,个性化学习和安全监测)。正如最近的心理和行为研究所揭示的那样,面部表情擅长沟通分类情绪(例如,快乐,悲伤,惊喜等),而体现可能会导致尺寸情绪状态的感知(例如唤醒和价值)。在本文中,我们提出了一个半特征级融合框架,该框架包括面部和体型的情感信息,以利用对价唤起空间中用户情绪状态的更可靠地解释。遗传算法也应用于进行自动特征优化。我们随后提出了一个集合回归模型,以强大地预测价值在价唤起空间中的用户的连续情感尺寸。经验结果表明,通过将最佳判别体特征和导出的动作单位强度组合为输入,所提出的具有自适应集合回归的系统实现了唤醒和价维的回归的最佳性能。

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