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Effective Vision-based Classification for Separating Sugar Beets and Weeds for Precision Farming

机译:有效的基于视觉的分类方法,用于甜菜和杂草的分离,用于精准农业

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摘要

The use of robots in precision farming has the potential to reduce the reliance on herbicides and pesticides through selectively spraying individual plants or through manual weed removal. A prerequisite for that is the ability of the robot to separate and identify the value crops and the weeds in the field. Based on the output of the robot's perception system, it can trigger the actuators for spraying or removal. In this paper, we address the problem of detecting sugar beet plants as well as weeds using a camera installed on a mobile field robot. We propose a system that performs vegetation detection, local as well as object-based feature extraction, random forest classification, and smoothing through a Markov random field to obtain an accurate estimate of crops and weeds. We implemented and thoroughly evaluated our system using a real farm robot in different sugar beet fields, and we illustrate that our approach allows for accurately identifying weeds in a field.
机译:通过在选择性耕作中使用机器人,可以通过选择性喷洒单个植物或手动除草来减少对除草剂和杀虫剂的依赖。前提条件是机器人能够分离和识别田间有价值的农作物和杂草。根据机器人感知系统的输出,它可以触发执行器进行喷涂或拆卸。在本文中,我们解决了使用安装在移动现场机器人上的摄像头检测甜菜植物和杂草的问题。我们提出了一种系统,该系统执行植被检测,局部以及基于对象的特征提取,随机森林分类以及通过马尔可夫随机场进行平滑处理,以获取农作物和杂草的准确估算值。我们使用真正的农场机器人在不同的甜菜田间实施并全面评估了我们的系统,并且说明了我们的方法可以准确识别田间的杂草。

著录项

  • 来源
    《Journal of Field Robotics》 |2017年第6期|1160-1178|共19页
  • 作者单位

    Department of Photogrammetry, University of Bonn, Nussallee 15, Bonn, Germany;

    Deepfield Robotics, Robert Bosch Start-up GmbH, Benzstrasse 56, Renningen, Germany;

    Deepfield Robotics, Robert Bosch Start-up GmbH, Benzstrasse 56, Renningen, Germany;

    Department of Photogrammetry, University of Bonn, Nussallee 15, Bonn, Germany;

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