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融合模糊视觉伺服与基于全球定位系统的规划,以获取小型作物检测机器人的适当导航行为。

Merge Fuzzy Visual Servoing and GPS-Based Planning to Obtain a Proper Navigation Behavior for a Small Crop-Inspection Robot.

作者信息

Bengochea-Guevara José M, Conesa-Muñoz Jesus, Andújar Dionisio, Ribeiro Angela

机构信息

Center for Automation and Robotics, CSIC-UPM, Arganda del Rey, Madrid 28500, Spain.

出版信息

Sensors (Basel). 2016 Feb 24;16(3):276. doi: 10.3390/s16030276.

Abstract

The concept of precision agriculture, which proposes farming management adapted to crop variability, has emerged in recent years. To effectively implement precision agriculture, data must be gathered from the field in an automated manner at minimal cost. In this study, a small autonomous field inspection vehicle was developed to minimise the impact of the scouting on the crop and soil compaction. The proposed approach integrates a camera with a GPS receiver to obtain a set of basic behaviours required of an autonomous mobile robot to inspect a crop field with full coverage. A path planner considered the field contour and the crop type to determine the best inspection route. An image-processing method capable of extracting the central crop row under uncontrolled lighting conditions in real time from images acquired with a reflex camera positioned on the front of the robot was developed. Two fuzzy controllers were also designed and developed to achieve vision-guided navigation. A method for detecting the end of a crop row using camera-acquired images was developed. In addition, manoeuvres necessary for the robot to change rows were established. These manoeuvres enabled the robot to autonomously cover the entire crop by following a previously established plan and without stepping on the crop row, which is an essential behaviour for covering crops such as maize without damaging them.

摘要

精准农业的概念近年来应运而生,它主张根据作物的差异性进行农事管理。为了有效实施精准农业,必须以最低成本自动从田间收集数据。在本研究中,开发了一种小型自主田间检测车辆,以尽量减少巡查对作物和土壤压实的影响。所提出的方法将摄像头与全球定位系统(GPS)接收器相结合,以获得自主移动机器人全面覆盖作物田进行检测所需的一组基本行为。路径规划器考虑田间轮廓和作物类型来确定最佳检测路线。开发了一种图像处理方法,能够在不受控制的光照条件下,实时从安装在机器人前部的单反相机获取的图像中提取作物中央行。还设计并开发了两个模糊控制器,以实现视觉引导导航。开发了一种利用相机获取的图像检测作物行末端的方法。此外,还确定了机器人换行所需的操作。这些操作使机器人能够按照先前制定的计划自主覆盖整个作物区域,且不会踩到作物行,这对于像玉米这样的作物进行覆盖而不造成损害来说是一种必不可少的行为。

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