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Recognising Agent Behaviour During Variable Length Activities

机译:在可变长度活动期间识别代理行为

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In this paper we present a new method for obtaining situation awareness via the automatic recognition of agent behaviours. In contrast to many other approaches, the presented method models different behaviour durations without using a fixed classification window, and does not require a distribution of behaviour durations. We introduce the Variable Window Layered Hidden Markov Model (VW-LHMM) as an extension of the LHMM to specifically address behaviours with irregular duration. We validate our approach by simulating three high-level behaviours within the harbour and coastline security domain. We compare performance against the LHMM and show that our approach provides a 10% improvement in classification accuracy, in addition to earlier classification.
机译:在本文中,我们介绍了一种通过自动识别代理行为来获得情境感知的新方法。与许多其他方法相比,所呈现的方法在不使用固定分类窗口的情况下模拟不同的行为持续时间,并且不需要行为持续时间的分布。我们将变量窗口分层隐藏的Markov模型(VW-LHMM)介绍为LHMM的扩展,以具体地解决具有不规则持续时间的行为。我们通过模拟港口和海岸线安全域中的三种高级行为来验证我们的方法。除了早期的分类外,我们比较对LHMM对抗LHMM的表现,并表明我们的方法提供了10%的分类准确性提高。

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