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UAV-Based Classification of Cercospora Leaf Spot Using RGB Images

机译:基于UAV的Cercospora叶斑植物使用RGB图像分类

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Plant diseases can impact crop yield. Thus, the detection of plant diseases using sensors that can be mounted on aerial vehicles is in the interest of farmers to support decision-making in integrated pest management and to breeders for selecting tolerant or resistant genotypes. This paper investigated the detection of Cercospora leaf spot (CLS), caused by Cercospora beticola in sugar beet using RGB imagery. We proposed an approach to tackle the CLS detection problem using fully convolutional neural networks, which operate directly on RGB images captured by a UAV. This efficient approach does not require complex multi- or hyper-spectral sensors, but provides reliable results and high sensitivity. We provided a detection pipeline for pixel-wise semantic segmentation of CLS symptoms, healthy vegetation, and background so that our approach can automatically quantify the grade of infestation. We thoroughly evaluated our system using multiple UAV datasets recorded from different sugar beet trial fields. The dataset consisted of a training and a test dataset and originated from different fields. We used it to evaluate our approach under realistic conditions and analyzed its generalization capabilities to unseen environments. The obtained results correlated to visual estimation by human experts significantly. The presented study underlined the potential of high-resolution RGB imaging and convolutional neural networks for plant disease detection under field conditions. The demonstrated procedure is particularly interesting for applications under practical conditions, as no complex and cost-intensive measuring system is required.
机译:植物疾病会影响作物产量。因此,使用可以安装在空中车辆上的传感器的植物疾病的检测符合农民在综合害虫管理中支持决策和用于选择耐受或抗性基因型的繁殖者。本文研究了使用RGB Imagerery的糖甜菜甜菜碱引起的Cercospora叶斑病(CLS)的检测。我们提出了一种使用完全卷积神经网络来解决CLS检测问题的方法,它直接在由UAV捕获的RGB图像上运行。这种有效的方法不需要复杂的多光谱传感器,但提供可靠的结果和高灵敏度。我们提供了一种检测管道,用于CLS症状,健康植被和背景的像素明智的语义细分,以便我们的方法可以自动量化侵扰的等级。我们使用从不同的糖甜菜试验领域记录的多个UAV数据集进行彻底评估我们的系统。数据集由培训和测试数据集组成,并源自不同的字段。我们使用它来评估我们在现实条件下的方法,并分析了其概念环境的泛化能力。所获得的结果与人类专家的视觉估计有关。本研究强调了高分辨率RGB成像和卷积神经网络在现场条件下的植物疾病检测的潜力。在实际条件下,所示的程序对应用特别有趣,因为不需要复杂和成本密集的测量系统。

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