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Fast Detection of Sclerotinia Sclerotiorum on Oilseed Rape Leaves Using Low-Altitude Remote Sensing Technology

机译:低空遥感技术快速检测油菜油菜核盘菌核盘菌

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摘要

Sclerotinia sclerotiorum, one of the major diseases infecting oilseed rape leaves, has seriously affected crop yield and quality. In this study, an indoor unmanned aerial vehicle (UAV) low-altitude remote sensing simulation platform was built for disease detection. Thermal, multispectral and RGB images were acquired before and after being artificially inoculated with Sclerotinia sclerotiorum on oilseed rape leaves. New image registration and fusion methods based on scale-invariant feature transform (SIFT) were presented to construct a fused database using multi-model images. The changes of temperature distribution in different sections of infected areas were analyzed by processing thermal images, the maximum temperature difference (MTD) on a single leaf reached 1.7 degrees Celsius 24 h after infection. Four machine learning models were established using thermal images and fused images respectively, including support vector machine (SVM), random forest (RF), K-nearest neighbor (KNN) and naïve Bayes (NB). The results demonstrated that the classification accuracy was improved by 11.3% after image fusion, and the SVM model obtained a classification accuracy of 90.0% on the task of classifying disease severity. The overall results indicated the UAV low-altitude remote sensing simulation platform equipped with multi-sensors could be used to early detect Sclerotinia sclerotiorum on oilseed rape leaves.
机译:核盘菌核盘菌(Sclerotiarum sclerotiorum)是影响油菜叶的主要疾病之一,严重影响了作物的产量和品质。在这项研究中,建立了室内无人机低空遥感模拟平台,用于疾病检测。在油菜籽叶上用菌核盘菌人工接种之前和之后,获取热图像,多光谱图像和RGB图像。提出了基于尺度不变特征变换(SIFT)的图像配准和融合新方法,以利用多模型图像构建融合数据库。通过处理热图像分析感染区域不同区域的温度分布变化,感染后24 h,单叶的最大温差(MTD)达到1.7摄氏度。分别使用热图像和融合图像建立了四个机器学习模型,包括支持向量机(SVM),随机森林(RF),K近邻(KNN)和朴素贝叶斯(NB)。结果表明,图像融合后分类准确率提高了11.3%,SVM模型在疾病严重度分类任务中获得了90.0%的分类准确率。总体结果表明,配备多传感器的无人机低空遥感仿真平台可用于早期检测油菜油菜菌核盘菌。

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