An Offline-Online Strategy for Goal-Oriented Coverage Path Planning using A Priori Information

Zeba Khanam, S. Saha, D. Ognibene, K. Mcdonald-Maier, Shoaib Ehsan
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引用次数: 1

Abstract

Recent times are witnessing the emergence of indoor sites with extenuating circumstances that place a strict time constraint on mobile robots to reach a target while covering a given area. This has created a global demand to equip mobile robots with the ability to autonomously plan a coverage path to reach the static target effectively and efficiently. The current approaches to achieve such tasks, however, are either time-consuming or human-operator dependent. To this end, an offline-online strategy is proposed to meet the speeding-up challenge by efficiently modelling the environment using a priori information. In the ‘offline’ stage of the strategy, the layout of the environment is segmented into a set of regions. The corners and dead-ends are identified based on the spatial mobility of the regions. The global path is then computed by deriving a graph-structured, road map using the segmented regions. In the ‘online’ stage, the global path is traversed by selecting frontiers which concurrently minimizes the covered area and time. In case the path is obstructed, a re-planning strategy is deployed. The proposed strategy is evaluated by various experiments against two baseline search approaches in three simulated environments. The results manifest a significant reduction in time to reach the goal and coverage area which caters to the strict time constraint for mobile robots.
基于先验信息的目标导向覆盖路径规划的离线-在线策略
最近出现了一些室内场地,这些场地有严格的时间限制,移动机器人在覆盖给定区域时要达到目标。这就产生了一种全球需求,即为移动机器人配备自主规划覆盖路径的能力,以有效地到达静态目标。然而,目前实现这些任务的方法要么耗时,要么依赖于人工操作。为此,提出了一种离线-在线策略,通过使用先验信息对环境进行有效建模来应对加速挑战。在战略的“离线”阶段,环境的布局被分割成一组区域。根据区域的空间流动性来识别角落和死角。然后,通过使用分割区域导出图形结构的路线图来计算全局路径。在“在线”阶段,通过选择边界来遍历全局路径,同时最小化覆盖面积和时间。如果路径受阻,则部署重新规划策略。在三种模拟环境中,对两种基线搜索方法进行了各种实验评估。结果表明,达到目标的时间和覆盖面积明显减少,这满足了移动机器人严格的时间限制。
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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