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An asynchronous Dynamic Bayesian Network for activity recognition in an Ambient Intelligent environment

机译:用于环境智能环境中活动识别的异步动态贝叶斯网络

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Ambient Intelligence is the future of computing where devices predict what users need and help them carry out their everyday life activities easier. To make this prediction possible these environments should be aware of the context. Activity recognition is one of the most complex problems in context-aware environments. In this paper we propose a layered Dynamic Bayesian Network (DBN) to recognize activities in an oral presentation. The layered architecture gives us the opportunity to recognize complex activities using the classification results of sensory data in the first layer regardless of the physical environment. Our model is event-driven meaning the classification takes place only when a change has occurred in the feature space. Our contribution is that instead of developing a system for recognition of single activities with equal durations and applying it in a consecutive manner to recognize a sequence of activities, we concentrate on recognition of the whole sequence consisting of activities with different durations. The results show how DBNs can be used to overcome Hidden Markov Models problems in dealing with multiple sensory data for the classification in the second layer.
机译:环境智能是计算的未来,设备可以预测用户的需求并帮助他们更轻松地开展日常生活。为了使这种预测成为可能,这些环境应了解上下文。活动识别是上下文感知环境中最复杂的问题之一。在本文中,我们提出了一个分层的动态贝叶斯网络(DBN)来识别口头陈述中的活动。分层的体系结构使我们有机会利用第一层中的感官数据的分类结果来识别复杂的活动,而与物理环境无关。我们的模型是事件驱动的,这意味着仅在要素空间发生更改时才进行分类。我们的贡献在于,我们没有开发一个识别具有相同持续时间的单个活动的系统并以连续的方式应用于识别一系列活动的系统,而是专注于识别由不同持续时间的活动组成的整个序列。结果表明,在第二层的分类中,如何使用DBN来克服隐马尔可夫模型在处理多个感官数据时遇到的问题。

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