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A Logical Theory of Robot Localization

机译:机器人本地化的逻辑理论

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摘要

A central problem in applying logical knowledge representation formalisms to traditional robotics is that the treatment of belief change is categorical in the former, while probabilistic in the latter. A typical example is the fundamental capability of localization where a robot uses its many noisy sensors to situate itself in a dynamic world. Domain designers are then left with the rather unfortunate task of abstracting probabilistic sensors in terms of categorical ones, or more drastically, completely abandoning the inner workings of sensors to black-box probabilistic tools and then interpreting their outputs in an abstract way. Building on a first-principles approach by Bacchus, Halpern and Levesque, and a recent continuous extension to it by Belle and Levesque, we provide an axiomatization that shows how localization can be realized as a basic action theory, thereby demonstrating how such capabilities can be enabled in a single logical framework.
机译:对传统机器人施加逻辑知识表示形式主义的核心问题是,前者的对信仰变化的治疗是分类的,而后者在概率。典型的例子是本地化的基本能力,机器人使用其许多嘈杂的传感器来在一个充满活力的世界中寻找本身。然后,域名设计人员在分类的方面或更加急剧地留下了抽象的概率传感器的相当不幸的任务,完全放弃了传感器的内部工作,然后以抽象的方式解释他们的输出。由Bacchus,Halpern和Levesque的一件原则的建立,以及Belle和Levesque最近的连续延伸,我们提供了一种公务化,显示了本地化如何实现为基本行动理论,从而展示了这些能力如何在单个逻辑框架中启用。

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