Coordinating multi-robot systems through environment partitioning for adaptive informative sampling

Nicholas Fung, J. Rogers, Carlos Nieto, H. Christensen, S. Kemna, G. Sukhatme
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引用次数: 18

Abstract

As robotic platforms have become more capable and autonomous, they have increasingly been utilized in time sensitive applications such as search and rescue. To that end, we have developed a system for teams of robots to efficiently explore an environment while taking sensor measurements. The system utilizes an information seeking algorithm that generates high priority points of interest based on the highest expected information gained per distance travelled. In order to coordinate multiple robots, the system partitions the area into different regions according to the effort needed to explore each region. Robots are assigned different regions to measure in order to minimize repetition of work and reduce interference between each robot.We present an information rate adaptive sampling approach for tasking robots within an environment to gather sensor measurements. We evaluated our approach within a simulation environment with one to four robots. Multiple robots are coordinated through our region segmentation approach. The data shows efficiency gains through the use of adaptive information gain rate tasking above a naïve closest point approach. We also see positive results from using the region segmentation technique. We further the experimentation by testing the algorithm on real world robots and verify the results in real world experimentation.
通过环境划分协调多机器人系统,实现自适应信息采样
随着机器人平台的能力和自主性越来越强,它们越来越多地用于搜索和救援等对时间敏感的应用。为此,我们开发了一个系统,让机器人团队在进行传感器测量的同时有效地探索环境。该系统利用信息搜索算法,根据每行驶距离获得的最高期望信息生成高优先级兴趣点。为了协调多个机器人,系统根据探索每个区域所需的努力将区域划分为不同的区域。为了减少重复工作和减少机器人之间的干扰,机器人被分配到不同的区域进行测量。我们提出了一种信息率自适应采样方法,用于任务机器人在环境中收集传感器测量值。我们在一到四个机器人的模拟环境中评估了我们的方法。通过我们的区域分割方法来协调多个机器人。数据显示,通过使用naïve最近点方法以上的自适应信息增益率任务,效率得到了提高。我们也看到了使用区域分割技术的积极结果。我们通过在真实世界的机器人上测试算法来进一步实验,并在真实世界的实验中验证结果。
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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