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Mixed Logical Inference and Probabilistic Planning for Robots in Unreliable Worlds

机译:不可靠世界中机器人的混合逻辑推理和概率规划

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摘要

Deployment of robots in practical domains poses key knowledge representation and reasoning challenges. Robots need to represent and reason with incomplete domain knowledge, acquiring and using sensor inputs based on need and availability. This paper presents an architecture that exploits the complementary strengths of declarative programming and probabilistic graphical models as a step toward addressing these challenges. Answer Set Prolog (ASP), a declarative language, is used to represent, and perform inference with, incomplete domain knowledge, including default information that holds in all but a few exceptional situations. A hierarchy of partially observable Markov decision processes (POMDPs) probabilistically models the uncertainty in sensor input processing and navigation. Nonmonotonic logical inference in ASP is used to generate a multinomial prior for probabilistic state estimation with the hierarchy of POMDPs. It is also used with historical data to construct a beta (meta) density model of priors for metareasoning and early termination of trials when appropriate. Robots equipped with this architecture automatically tailor sensor input processing and navigation to tasks at hand, revising existing knowledge using information extracted from sensor inputs. The architecture is empirically evaluated in simulation and on a mobile robot visually localizing objects in indoor domains.
机译:在实际领域中部署机器人带来了关键的知识表示和推理挑战。机器人需要用不完整的领域知识来表示和推理,并根据需求和可用性获取和使用传感器输入。本文提出了一种利用声明式编程和概率图形模型的互补优势的体系结构,以此作为应对这些挑战的一步。答案集Prolog(ASP)是一种声明性语言,用于表示不完整的领域知识并进行推断,包括除少数例外情况以外的所有情况下都包含的默认信息。部分可观察的马尔可夫决策过程(POMDP)的层次结构概率性地对传感器输入处理和导航中的不确定性进行建模。 ASP中的非单调逻辑推断用于生成具有POMDP层次结构的概率状态估计的多项式先验。它还可以与历史数据一起使用,以构建适当的先验条件Beta(元)密度模型,以在适当时进行元推理和试验的提前终止。配备此架构的机器人会自动调整传感器输入处理和导航到手头的任务,使用从传感器输入中提取的信息来修改现有知识。在仿真中和在移动机器人上以视觉方式对室内区域中的对象进行视觉定位的经验评估了该体系结构。

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