Approach for Autonomous Robot Navigation in Greenhouse Environment for Integrated Pest Management

Smita Tiwari, Yuheng Zheng, M. Pattinson, María Campo-Cossio, Raúl Arnau, David Obregón, Ander Ansuategi, C. Tubío, Iker Lluvia, Oscar Rey, Jeroen Verschoore, Vojtech Adam, Joaquin Reyes
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引用次数: 3

Abstract

The use of autonomous robots for certain tasks within agriculture applications can bring many advantages. The H2020-funded GreenPatrol project has developed an autonomous system for pest detection and treatment within commercial greenhouses. In this system the robot will navigate autonomously and regularly inspect crops using an array of cameras and algorithms to detect and treat pests at an early stage in order to improve yield, reduce pesticide use and improve worker conditions. A key enabler for this application is the localization and navigation function of the robot platform. In order to operate independently and autonomously, the robot must know in real-time its precise location and direction of pointing, it must be able to plan a route through the greenhouse from its current location to where it needs to go, it must be able to control its movements to reach its required destination, and it must be able to identify and avoid obstacles that may obstruct its route. In order to achieve these goals the robot sub-systems include an absolute localization function, to provide precise absolute position and heading in a global reference frame in real-time, a relative localization function, to provide more fidelity of the exact location and orientation of the robot with respect to its surroundings in the greenhouse, and a navigation function, to plan the route through the greenhouse and provide movement instructions to the robot platform. This paper describes the localization system of the GreenPatrol robot and presents results of testing for each of the functions. The tests include simulations as well as data collections and tests of the real-time system using the robot platform. The results show the high performance of the positioning capability and heading information for the individual systems.
温室环境中害虫综合治理机器人自主导航方法研究
在农业应用中使用自主机器人完成某些任务可以带来许多优势。由h2020资助的GreenPatrol项目开发了一种用于商业温室内害虫检测和治疗的自主系统。在这个系统中,机器人将自动导航,并使用一系列摄像头和算法定期检查作物,在早期阶段检测和治疗害虫,以提高产量,减少农药使用,改善工人条件。这个应用程序的关键促成因素是机器人平台的定位和导航功能。为了独立自主地操作,机器人必须实时知道它的精确位置和指向的方向,它必须能够规划从当前位置到需要去的地方穿过温室的路线,它必须能够控制自己的运动以到达所需的目的地,它必须能够识别和避开可能阻碍其路线的障碍物。为了实现这些目标,机器人子系统包括一个绝对定位功能,在全局参考框架中实时提供精确的绝对位置和航向,一个相对定位功能,提供机器人相对于其周围环境的精确位置和方向的保真度,以及一个导航功能,规划通过温室的路线并向机器人平台提供运动指令。本文介绍了绿色巡逻机器人的定位系统,并给出了各项功能的测试结果。测试包括仿真、数据收集和使用机器人平台对实时系统进行测试。结果表明,该方法具有较高的定位性能和单个系统的航向信息。
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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