Learning Context-Based Outcomes for Mobile Robots in Unstructured Indoor Environments

Priyam Parashar, Robert W. H. Fisher, R. Simmons, M. Veloso, Joydeep Biswas
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引用次数: 2

Abstract

We present a method to learn context-dependent outcomes of behaviors in unstructured indoor environments. The idea is that certain features in the environment may be predictive of differences in outcomes, such as how long a mobile robot takes to traverse a corridor. Doing so enables the robot to plan more effectively, and also be able to interact with people more effectively by more accurately predicting when its plans may take longer to execute or may be likely to fail. We use a node-and-edge based map of the environment and treat the traversal time of the robot for each edge as a random variable to be characterized. The first step is to determine whether the distribution of the random variable is multimodal and, if so, we learn to classify the modes using a hierarchy of plan-time features (e.g., time of the day, day of the week) and run-time features (observations of recent traversal times through other corridors). We utilize a cascading regression system that first estimates which mode of the traversal distribution we expect the robot to observe, and then predict the actual traversal time through a corridor. On average, our method produces a mean residual error of less than 2.7 seconds.
移动机器人在非结构化室内环境中基于上下文的学习结果
我们提出了一种方法来学习非结构化室内环境中行为的情境依赖结果。他们的想法是,环境中的某些特征可以预测结果的差异,比如移动机器人穿过一条走廊需要多长时间。这样做可以使机器人更有效地规划,也可以通过更准确地预测何时它的计划可能需要更长的时间来执行或可能失败,从而更有效地与人互动。我们使用基于节点和边缘的环境地图,并将机器人对每条边的遍历时间作为一个随机变量来表征。第一步是确定随机变量的分布是否是多模态的,如果是,我们学习使用计划时间特征(例如,一天中的时间,一周中的哪一天)和运行时间特征(通过其他走廊的最近穿越时间的观察)的层次来分类模式。我们利用级联回归系统,首先估计我们期望机器人观察到的遍历分布的哪种模式,然后预测通过走廊的实际遍历时间。平均而言,我们的方法产生的平均残差小于2.7秒。
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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