Schirrmann Michael, Landwehr Niels, Giebel Antje, Garz Andreas, Dammer Karl-Heinz
Department of Engineering for Crop Production, Leibniz Institute for Agricultural Engineering and Bioeconomy, Potsdam, Germany.
Research Group "Data Science in Agriculture", Leibniz Institute for Agricultural Engineering and Bioeconomy, Potsdam, Germany.
Front Plant Sci. 2021 Mar 30;12:469689. doi: 10.3389/fpls.2021.469689. eCollection 2021.
Stripe rust (Pst) is a major disease of wheat crops leading untreated to severe yield losses. The use of fungicides is often essential to control Pst when sudden outbreaks are imminent. Sensors capable of detecting Pst in wheat crops could optimize the use of fungicides and improve disease monitoring in high-throughput field phenotyping. Now, deep learning provides new tools for image recognition and may pave the way for new camera based sensors that can identify symptoms in early stages of a disease outbreak within the field. The aim of this study was to teach an image classifier to detect Pst symptoms in winter wheat canopies based on a deep residual neural network (ResNet). For this purpose, a large annotation database was created from images taken by a standard RGB camera that was mounted on a platform at a height of 2 m. Images were acquired while the platform was moved over a randomized field experiment with Pst-inoculated and Pst-free plots of winter wheat. The image classifier was trained with 224 × 224 px patches tiled from the original, unprocessed camera images. The image classifier was tested on different stages of the disease outbreak. At patch level the image classifier reached a total accuracy of 90%. To test the image classifier on image level, the image classifier was evaluated with a sliding window using a large striding length of 224 px allowing for fast test performance. At image level, the image classifier reached a total accuracy of 77%. Even in a stage with very low disease spreading (0.5%) at the very beginning of the Pst outbreak, a detection accuracy of 57% was obtained. Still in the initial phase of the Pst outbreak with 2 to 4% of Pst disease spreading, detection accuracy with 76% could be attained. With further optimizations, the image classifier could be implemented in embedded systems and deployed on drones, vehicles or scanning systems for fast mapping of Pst outbreaks.
条锈病(Pst)是小麦作物的一种主要病害,若不加以防治会导致严重的产量损失。当即将突然爆发条锈病时,使用杀菌剂通常对于控制条锈病至关重要。能够检测小麦作物中条锈病的传感器可以优化杀菌剂的使用,并改善高通量田间表型分析中的病害监测。如今,深度学习为图像识别提供了新工具,并可能为基于摄像头的新型传感器铺平道路,这些传感器能够在田间病害爆发的早期阶段识别症状。本研究的目的是基于深度残差神经网络(ResNet)训练一个图像分类器,以检测冬小麦冠层中的条锈病症状。为此,从安装在2米高处平台上的标准RGB相机拍摄的图像中创建了一个大型注释数据库。在平台在冬小麦条锈病接种区和未接种区的随机田间试验上方移动时采集图像。图像分类器使用从原始未处理的相机图像中平铺的224×224像素补丁进行训练。图像分类器在病害爆发的不同阶段进行测试。在补丁级别,图像分类器的总准确率达到90%。为了在图像级别测试图像分类器,使用步长为224像素的大滑动窗口对图像分类器进行评估,以实现快速测试性能。在图像级别,图像分类器的总准确率达到77%。即使在条锈病爆发刚开始时病害传播率非常低(0.5%)的阶段,检测准确率也达到了57%。在条锈病爆发的初始阶段,当条锈病传播率为2%至4%时,检测准确率可达76%。通过进一步优化,图像分类器可以在嵌入式系统中实现,并部署在无人机、车辆或扫描系统上,用于条锈病爆发的快速测绘。