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A semi-supervised system for weed mapping in sunflower crops using unmanned aerial vehicles and a crop row detection method

机译:使用无人飞行器对向日葵作物进行杂草制图的半监督系统和作物行检测方法

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This paper presents a system for weed mapping, using imagery provided by unmanned aerial vehicles (UAVs). Weed control in precision agriculture is based on the design of site-specific control treatments according to weed coverage. A key component is precise and timely weed maps, and one of the crucial steps is weed monitoring, by ground sampling or remote detection. Traditional remote platforms, such as piloted planes and satellites, are not suitable for early weed mapping, given their low spatial and temporal resolutions. Nonetheless, the ultra-high spatial resolution provided by UAVs can be an efficient alternative. The proposed method for weed mapping partitions the image and complements the spectral information with other sources of information. Apart from the well-known vegetation indexes, which are commonly used in precision agriculture, a method for crop row detection is proposed. Given that crops are always organised in rows, this kind of information simplifies the separation between weeds and crops. Finally, the system incorporates classification techniques for the characterisation of pixels as crop, soil and weed. Different machine learning paradigms are compared to identify the best performing strategies, including unsupervised, semi-supervised and supervised techniques. The experiments study the effect of the flight altitude and the sensor used. Our results show that an excellent performance is obtained using very few labelled data complemented with unlabelled data (semi-supervised approach), which motivates the use of weed maps to design site-specific weed control strategies just when farmers implement the early post-emergence weed control. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文提出了一种利用无人飞行器(UAV)提供的图像进行杂草制图的系统。精准农业中的杂草控制是根据杂草覆盖率设计针对特定地点的控制措施而设计的。关键是精确和及时的杂草图,关键步骤之一是通过地面采样或远程检测进行杂草监测。鉴于传统的远程平台,如飞机和卫星,由于其时空分辨率低,因此不适合早期杂草制图。尽管如此,无人机提供的超高空间分辨率仍是一种有效的选择。所提出的杂草制图方法对图像进行分区,并用其他信息源补充光谱信息。除了精确农业常用的众所周知的植被指数外,还提出了一种农作物行检测方法。鉴于农作物总是成排组织,这种信息简化了杂草与农作物之间的分离。最后,该系统结合了分类技术,可将像素表征为作物,土壤和杂草。比较了不同的机器学习范式,以确定最佳性能的策略,包括无监督,半监督和监督技术。实验研究了飞行高度和所用传感器的影响。我们的结果表明,使用极少的标记数据和未标记的数据(半监督方法)进行补充,即可获得出色的性能,这正当农民实施早期出苗后的杂草图时,便可以使用杂草图设计针对特定地点的除草策略控制。 (C)2015 Elsevier B.V.保留所有权利。

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