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Crop signalling: A novel crop recognition technique for robotic weed control

机译:作物信令:一种用于机器人杂草控制的新型作物识别技术

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Weed control is a significant cost for speciality crop producers, especially on organic farms. Agricultural operations are still largely dependent on hand weeding that is labour intensive and labour shortages and rising wages have led to a surge in food production costs. Thus, there is an inherent need to automate weed control and contain both labour costs and demands. Automatically distinguishing weeds from the crop plant is a complex problem since weeds come in a wide variety of colours, shapes, and sizes, and crop plant foliage is often overlapped with itself or occluded by the weeds. Current technology in commercial use, cannot reliably and effectively perform the differentiation task in such complex scenarios in real-time. As a solution to this problem, our team at the University of California, Davis has developed a novel concept called crop signalling, a technology to make crop plants machine readable and reliably distinguishable from weeds for automatic weed control. Four different techniques have been investigated and developed to make smart crop marking systems such as a) systemic markers, b) fluorescent proteins, c) plant labels and d) topical markers. Indoor experiments have been conducted for each method. Field experiments, using plant labels and the topical markers methods, have been successfully conducted for real-time weed control in tomato and lettuce. The results demonstrated that robots could automatically detect and distinguish 99.7% of the crop plants with no false positive errors in dense complex outdoor scenes with high weed densities. The crop/weed differentiation was thus effective, fast, reliable, and commercialisation of robotic weed control using the technique may be feasible. (C) 2019 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:杂草控制是专业作物生产商的重要成本,特别是在有机农场上。农业业务仍然在很大程度上依赖于劳动力密集型和劳动力短缺和工资上升的杂草导致粮食生产成本的激增。因此,存在自动化杂草控制的固有需要并包含劳动力成本和需求。自动区分杂草从作物植物中是一个复杂的问题,因为杂草有各种各样的颜色,形状和尺寸,并且作物植物叶子通常与杂草的自身重叠或被遮挡。当前技术在商业用途中,无法在实时可靠地和有效地在这种复杂情景中执行差异化任务。作为解决此问题的解决方案,我们在加利福尼亚大学的团队中,戴维斯开发了一种称为裁剪信号的新颖概念,一种技术,使作物植物机械的技术可读,可靠地与自动杂草控制的杂草。已经研究了四种不同的技术,并开发出智能作物标记系统,例如A)全身标记,B)荧光蛋白,C)植物标记和D)局部标记。每种方法都进行了室内实验。现场实验,使用植物标签和局部标记方法,已成功进行番茄和生菜的实时杂草控制。结果表明,机器人可以自动检测和区分99.7%的作物植物,没有虚假的阳性误差,具有高杂草密度。因此,使用该技术有效,快速,可靠,以及机器人杂草控制的商业化的作物/杂草分化可能是可行的。 (c)2019年IAGRE。 elsevier有限公司出版。保留所有权利。

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