一组自利机器人的协同探索

M. Schukat, Declan O'Beirne
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引用次数: 6

摘要

本文提出了一种利用协作机器人团队进行机器人探索和测绘的新方法。这种方法旨在利用多个机器人提供的传感器数据的增加,以提高创建地图的效率、准确性和细节,以及使用一组廉价机器人的较低成本。勘探技术包括尽可能有效地覆盖一个区域,同时合作估计彼此的位置和方向。从多个角度观察感兴趣的物体并结合这些数据的能力意味着协作机器人可以在混乱的现实世界场景中定位物体并估计其形状。系统中的机器人扮演着社会代理人的角色,它们的合作动机是想要增加自身的效用。在这个社会中,机器人组成联盟来完成需要多个机器人输入的任务。联盟涉及不同机器人采用特定的角色或行为来执行这些任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative exploration for a group of self-interested robots
This paper presents and new approach to robot exploration and mapping using a team of cooperative robots. This approach aims to exploit the increase in sensor data that multiple robots offer to improve efficiency, accuracy and detail in maps created, and also the lower cost in employing a group of inexpensive robots. The exploration technique involves covering an area as efficiently as possible while cooperating to estimate each other's positions and orientations. The ability to observe objects of interest from a number of viewpoints and combine this data means that cooperative robots can localize objects and estimate their shape in cluttered real world scenes. Robots in the system act as social agents, and are motivated to cooperate by a desire to increase their own utility. Within this society, robots form coalitions to complete tasks that arise which require input from multiple robots. The coalitions involve the adoption of certain roles or behaviors on the part of the different robots to carry out these tasks.
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