四足机器人农药选择性喷洒平台

Hansen Hendra, Yubin Liu, Ryoichi Ishikawa, Takeshi Oishi, Yoshihiro Sato
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引用次数: 0

摘要

有效控制病虫害对提高作物产量至关重要,农药喷洒是实现这一目标的常用方法。本研究提出了一种使用四足机器人平台进行选择性农药喷洒的新方法,我们在西兰花田进行了测试。我们基于我们提出的定向梯度直方图和支持向量机(HOG-SVM)技术,结合最新的目标检测和跟踪方法,开发了一种检测和跟踪蠕虫的算法。我们的平台通过穿越西兰花作物线之间的沟槽并不断扫描以检测卷心菜蠕虫来进行测试。我们的实验表明,所提出的HOG-SVM算法成功地降低了实时蠕虫检测的误报率,在模拟环境中降低了约90%,在实际环境中降低了约60%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quadruped Robot Platform for Selective Pesticide Spraying
Effective control of disease and pest infection is vital for maximizing crop yields, and pesticide spraying is a commonly used method for achieving this goal. This study proposes a novel approach to selective pesticide spraying using a quadruped robot platform, which we tested in a broccoli field. We developed an algorithm to detect and track worms based on our proposed Histogram of Oriented Gradients and Support Vector Machine (HOG-SVM) techniques, integrated with the recent object detection and tracking methods. Our platform was tested by traversing the furrows between the broccoli crop lines and continuously scanning to detect cabbage worms. Our experiments demonstrate that the proposed HOG-SVM algorithm successfully reduced the false positive rate of real-time worm detection by reducing around 90% for the imitation environments and around 60% for the actual field.
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