Urizar Oscar J, Baig Mirza S, Barakova Emilia I, Regazzoni Carlo S, Marcenaro Lucio, Rauterberg Matthias
Department of Industrial Design, Eindhoven University of Technology Eindhoven, Netherlands.
Department of Naval, Electric, Electronic, and Telecommunications Engineering, University of Genova Genoa, Italy.
Front Comput Neurosci. 2016 Jul 8;10:63. doi: 10.3389/fncom.2016.00063. eCollection 2016.
Estimation of emotions is an essential aspect in developing intelligent systems intended for crowded environments. However, emotion estimation in crowds remains a challenging problem due to the complexity in which human emotions are manifested and the capability of a system to perceive them in such conditions. This paper proposes a hierarchical Bayesian model to learn in unsupervised manner the behavior of individuals and of the crowd as a single entity, and explore the relation between behavior and emotions to infer emotional states. Information about the motion patterns of individuals are described using a self-organizing map, and a hierarchical Bayesian network builds probabilistic models to identify behaviors and infer the emotional state of individuals and the crowd. This model is trained and tested using data produced from simulated scenarios that resemble real-life environments. The conducted experiments tested the efficiency of our method to learn, detect and associate behaviors with emotional states yielding accuracy levels of 74% for individuals and 81% for the crowd, similar in performance with existing methods for pedestrian behavior detection but with novel concepts regarding the analysis of crowds.
情绪估计是开发适用于拥挤环境的智能系统的一个重要方面。然而,由于人类情绪表现的复杂性以及系统在这种情况下感知情绪的能力,人群中的情绪估计仍然是一个具有挑战性的问题。本文提出了一种分层贝叶斯模型,以无监督的方式学习个体和作为一个整体的人群的行为,并探索行为与情绪之间的关系以推断情绪状态。使用自组织映射来描述个体运动模式的信息,并且分层贝叶斯网络构建概率模型以识别行为并推断个体和人群的情绪状态。该模型使用从类似于现实生活环境的模拟场景中产生的数据进行训练和测试。所进行的实验测试了我们的方法学习、检测行为并将行为与情绪状态相关联的效率,个体的准确率为74%,人群的准确率为81%,在性能上与现有的行人行为检测方法相似,但在人群分析方面有新颖的概念。