A Probabilistic Approach for Complete Coverage Path Planning with low-cost Systems

Nils Rottmann, Robin Denz, R. Bruder, Elmar Rueckert
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引用次数: 3

Abstract

Domestic robots, such as vacuum cleaners or lawn mowers, are mostly based on a low-cost design to make them affordable for the consumer. This often results in such robots being equipped with only simple sensors, such as in-/outside area detectors for lawn mowers. Intelligent navigation and planning strategies, however, usually require additional sensors like LiDAR sensors, cameras or time of flight sensors. Thus, there is a lack of intelligent approaches for the complete coverage of the workspace under consideration of only minimal sensing capabilities.In this work, we propose a probabilistic planning method for low-cost robots with limited sensing capabilities to completely cover an enclosed environment. Our planning approach thereby utilizes Monte Carlo Localization for estimating coverage probabilities based on the particle distribution. These coverage probabilities are stored in a grid map on the basis of which an intelligent path planning approach determines the next locations to be visited. We demonstrate our approach in different simulation scenarios for a realistic autonomous lawn mower with only in-/outside area detection capabilities. As comparison benchmark we use the common random walk mowing pattern.
低成本系统完全覆盖路径规划的概率方法
家用机器人,如真空吸尘器或割草机,大多基于低成本的设计,使它们对消费者来说是负担得起的。这通常导致这些机器人只配备简单的传感器,例如割草机的内外区域探测器。然而,智能导航和规划策略通常需要额外的传感器,如激光雷达传感器、摄像头或飞行时间传感器。因此,在考虑到只有最低限度的感应能力的情况下,缺乏对工作空间的完全覆盖的智能方法。在这项工作中,我们提出了一种概率规划方法,用于具有有限传感能力的低成本机器人完全覆盖封闭环境。因此,我们的规划方法利用蒙特卡罗定位来估计基于粒子分布的覆盖概率。这些覆盖概率存储在网格地图中,在此基础上,智能路径规划方法确定下一个要访问的位置。我们在不同的模拟场景中展示了我们的方法,用于仅具有内外区域检测功能的现实自动割草机。作为比较基准,我们使用了常见的随机行走割草模式。
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