动态环境下的群体互动分析。

Peng Dai, Huijun Di, Ligeng Dong, Linmi Tao, Guangyou Xu
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引用次数: 54

摘要

计算机对人类行为和交互的理解是人类计算的关键研究问题之一。在这方面,上下文在从传感器数据中对人类行为和社会信号的语义理解中起着至关重要的作用。针对群体交互场景分析中的情境感知问题,提出了一种基于事件的动态情境模型。相应的,提出了事件驱动的多层次动态贝叶斯网络来检测多层次事件,这是上下文感知机制的基础。可以实现在线分析,优于以往的工作。在我们的智能会议室中进行的实验证明了我们方法的有效性。
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Group interaction analysis in dynamic context.

Computer understanding of human actions and interactions is one of the key research issues in human computing. In this regard, context plays an essential role in semantic understanding of human behavioral and social signals from sensor data. This paper put forward an event-based dynamic context model to address the problems of context awareness in the analysis of group interaction scenarios. Event-driven multilevel dynamic Bayesian network is correspondingly proposed to detect multilevel events, which underlies the context awareness mechanism. Online analysis can be achieved, which is superior over previous works. Experiments in our smart meeting room demonstrate the effectiveness of our approach.

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