Collaborative Sampling Using Heterogeneous Marine Robots Driven by Visual Cues

Sandeep Manjanna, Johanna Hansen, Alberto Quattrini Li, Ioannis M. Rekleitis, G. Dudek
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引用次数: 15

Abstract

This paper addresses distributed data sampling in marine environments using robotic devices. We present a method to strategically sample locally observable features using two classes of sensor platforms. Our system consists of a sophisticated autonomous surface vehicle (ASV) which strategically samples based on information provided by a team of inexpensive sensor nodes. The sensor nodes effectively extend the observational capabilities of the vehicle by capturing georeferenced samples from disparate and moving points across the region. The ASV uses this information, along with its own observations, to plan a path so as to sample points which it expects to be particularly informative. We compare our approach to a traditional exhaustive survey approach and show that we are able to effectively represent a region with less energy expenditure. We validate our approach through simulations and test the system on real robots in field.
基于视觉线索驱动的异构海洋机器人协同采样
本文讨论了利用机器人设备在海洋环境中进行分布式数据采样。我们提出了一种使用两类传感器平台对局部可观察特征进行策略性采样的方法。我们的系统由一个复杂的自动水面车辆(ASV)组成,它根据一组廉价的传感器节点提供的信息进行策略性采样。传感器节点通过从整个区域的不同和移动点捕获地理参考样本,有效地扩展了车辆的观测能力。ASV使用这些信息,连同它自己的观察,来规划一条路径,以便对它期望特别有用的点进行采样。我们将我们的方法与传统的详尽调查方法进行比较,并表明我们能够有效地代表一个能源消耗较少的地区。我们通过仿真验证了我们的方法,并在真实的机器人上进行了现场测试。
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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