Plan and Goal Recognition as HTN Planning

D. Höller, P. Bercher, G. Behnke, Susanne Biundo-Stephan
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引用次数: 34

Abstract

Plan-and Goal Recognition (PGR) is the task of inferring the goals and plans of an agent based on its actions. Traditional approaches in PGR are based on a plan library including pairs of plans and corresponding goals. In recent years, the field successfully exploited the performance of planning systems for PGR. The main benefits are the presence of efficient solvers and well-established, compact formalisms for behavior representation. However, the expressivity of the STRIPS planning models used so far is limited, and models in PGR are often structured in a hierarchical way. We present the approach Plan and Goal Recognition as HTN Planning that combines the expressive but still compact grammar-like HTN representation with the advantage of using unmodified, off-the-shelf planning systems for PGR. Our evaluation shows that - using our approach - current planning systems are able to handle large models with thousands of possible goals, that the approach results in high recognition rates, and that it works even when the environment is partially observable, i.e., if the observer might miss observations.
计划和目标识别作为HTN计划
计划和目标识别(PGR)是基于智能体的行为推断其目标和计划的任务。PGR的传统方法是基于一个计划库,包括计划对和相应的目标。近年来,该领域成功地利用了PGR规划系统的性能。它的主要优点是提供了高效的求解器和完善的、紧凑的行为表示形式。然而,迄今为止使用的条带规划模型的表达能力有限,PGR中的模型通常以分层方式构建。我们提出的方法计划和目标识别作为HTN计划,它结合了表达但仍然紧凑的类似语法的HTN表示和使用未经修改的现成的PGR计划系统的优势。我们的评估表明,使用我们的方法,当前的规划系统能够处理具有数千个可能目标的大型模型,该方法导致高识别率,并且即使环境是部分可观察的,也就是说,如果观察者可能错过观察,它也能工作。
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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