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Now or later? Predicting and maximising success of navigation actions from long-term experience

机译:现在或待会儿?从长期经验中预测并最大程度地完成导航操作

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In planning for deliberation or navigation in real-world robotic systems, one of the big challenges is to cope with change. It lies in the nature of planning that it has to make assumptions about the future state of the world, and the robot's chances of successively accomplishing actions in this future. Hence, a robot's plan can only be as good as its predictions about the world. In this paper, we present a novel approach to specifically represent changes that stem from periodic events in the environment (e.g. a door being opened or closed), which impact on the success probability of planned actions. We show that our approach to model the probability of action success as a set of superimposed periodic processes allows the robot to predict action outcomes in a long-term data obtained in two real-life offices better than a static model. We furthermore discuss and showcase how this knowledge gathered can be successfully employed in a probabilistic planning framework to devise better navigation plans. The key contributions of this paper are (i) the formation of the spectral model of action outcomes from non-uniform sampling, the (ii) analysis of its predictive power using two long-term datasets, and (iii) the application of the predicted outcomes in an MDP-based planning framework.
机译:在规划实际机器人系统中的审议或导航时,最大的挑战之一就是应对变化。计划的本质在于必须对世界的未来状况以及机器人在未来中连续完成动作的机会做出假设。因此,机器人的计划只能与对世界的预测一样好。在本文中,我们提出了一种新颖的方法来专门表示环境中周期性事件(例如,门被打开或关闭)引起的变化,这些变化会影响计划动作的成功概率。我们证明,通过将一组周期性过程叠加在一起来对动作成功概率进行建模的方法,使机器人能够比在静态模型中更好地预测在两个实际办公室获得的长期数据中的动作结果。我们还将讨论并展示如何将收集到的这些知识成功地应用于概率规划框架中,以设计出更好的导航计划。本文的主要贡献是(i)非均匀采样形成的行动结果光谱模型;(ii)使用两个长期数据集对其预测能力的分析;以及(iii)预测结果的应用基于MDP的计划框架中的结果。

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