Goal Recognition is the task of discerning the correct intended goal that an agent aims to achieve, given a set of possible goals, a domain model, and a sequence of observations as a sample of the plan being executed in the environment. Existing approaches assume that the possible goals are formalized as a conjunction in deterministic settings. In this paper, we develop a novel approach that is capable of recognizing temporally extended goals in Fully Observable Non-Deterministic (FOND) planning domain models, focusing on goals on finite traces expressed in Linear Temporal Logic (LTLf) and (Pure) Past Linear Temporal Logic (PLTLf). We empirically evaluate our goal recognition approach using different LTLf and PLTLf goals over six common FOND planning domain models, and show that our approach is accurate to recognize temporally extended goals at several levels of observability.
翻译:承认是一项任务,即根据一套可能的目标、领域模型和作为环境执行的计划样本的观测顺序,辨别一个代理人旨在实现的正确预期目标,作为在环境中执行的计划的样本。现有办法假定,在确定性环境中,可能的目标已正式确定为共同的目标。在本文件中,我们开发了一种新颖的方法,能够承认完全可观察的非术语(FOND)规划领域模型中的时间延伸目标,侧重于线性时空逻辑(LTLf)和(Pure)过去时空逻辑(PLTLf)所显示的有限痕迹目标。 我们用不同LTLf和PLTLf目标对六个共同FOND规划领域模型的确认方法进行了实证性评估,并表明我们的方法准确,可以在若干可观察性层次上确认时间延伸目标。