动态信息地图的多目标遍历搜索

Ananya Rao, Abigail Breitfeld, A. Candela, Benjamin Jensen, David S. Wettergreen, H. Choset
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引用次数: 3

摘要

机器人探险者是收集人类无法到达的地区信息的必要工具。对于行星探索或搜救等应用,机器人利用对该区域的先验知识来指导它们的搜索。遍历搜索方法找到的轨迹,有效地平衡探索未知区域和利用先验信息。在许多基于搜索的问题中,机器人必须考虑科学信息获取、风险和能量等多种因素,并随着时间的推移更新其对这些动态目标的信念。然而,现有的遍历搜索方法要么考虑多个静态目标,要么考虑单个动态目标,而不是考虑多个动态目标。我们通过提出一种称为动态多目标遍历搜索(D-MO-ES)的算法来解决现有方法中的这一空白,该算法有效地规划了多个变化目标的遍历轨迹。我们的实验表明,我们的方法需要的计算时间比具有相同覆盖范围的naïve方法少9倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Objective Ergodic Search for Dynamic Information Maps
Robotic explorers are essential tools for gathering information about regions that are inaccessible to humans. For applications like planetary exploration or search and rescue, robots use prior knowledge about the area to guide their search. Ergodic search methods find trajectories that effectively balance exploring unknown regions and exploiting prior information. In many search based problems, the robot must take into account multiple factors such as scientific information gain, risk, and energy, and update its belief about these dynamic objectives as they evolve over time. However, existing ergodic search methods either consider multiple static objectives or consider a single dynamic objective, but not multiple dynamic objectives. We address this gap in existing methods by presenting an algorithm called Dynamic Multi-Objective Ergodic Search (D-MO-ES) that efficiently plans an ergodic trajectory on multiple changing objectives. Our experiments show that our method requires up to nine times less compute time than a naïve approach with comparable coverage of each objective.
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