Plan recognition in smart environments

Niels Snoeck, H. V. Kranenburg, H. Eertink
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引用次数: 4

Abstract

This position paper describes our approach to recognizing tasks of mobile users in a smart environment. Such high-level interpretation of behavior enables context-aware applications to adapt to the users’ needs and intentions. In the AI community, plan recognition techniques have proven their applicability in recognizing the tasks of software agents in a controlled environment. However, these approaches fall short in recognizing tasks of people in a real-world environment. Therefore, we propose several extensions to plan recognition techniques by using constraints and hybrid reasoning algorithms. In addition, we propose to improve the plan recognition process with multi-step processing of context information. We also discuss how our approach leverages some of the difficulties of plan recognition in smart environments.
智能环境中的计划识别
这份意见书描述了我们在智能环境中识别移动用户任务的方法。这种对行为的高级解释使上下文感知应用程序能够适应用户的需求和意图。在人工智能领域,计划识别技术已经证明了它们在识别受控环境中软件代理的任务方面的适用性。然而,这些方法在识别现实世界环境中人们的任务方面存在不足。因此,我们提出了使用约束和混合推理算法来扩展计划识别技术。此外,我们提出了通过多步处理上下文信息来改进平面图识别过程。我们还讨论了我们的方法如何利用智能环境中计划识别的一些困难。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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