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Detection of fungal infection in wheat with high-resolution multispectral data

机译:利用高分辨率多光谱数据检测小麦中的真菌感染

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The exact knowledge of the spatiotemporal dynamics of crop diseases for an implementation of a site-specific fungicide application is fundamental. Remote sensing is an appropriate tool to monitor the heterogeneity of fungal diseases within agricultural sites. However, the identification of an infection at an early growth stage is essential. This study assesses the potential of multispectral remote sensing for multitemporal analyses of crop diseases. Within an experimental test site near Bonn (Germany) a 6-ha sized plot with winter wheat was created, containing crops with each possible infection stage of three different pathogens. Two multispectral QuickBird images (04/22/2005 and 06/20/2005) and a spectrally resampled HyMap image (05/28/2005) were used to analyse the spatiotemporal dynamic of infection. The data preprocessing comprised a radiometric and a precise geometric correction by using DGPS-measurements that is an important requirement for Precision Agriculture applications. Ground truth data, in particular infection severity, growth stage/height, and spectroradiometer measurements were collected. A decision tree, using mixture tuned matched filtering results and a vegetation index was applied to classify the data (infected and non-infected areas). Classification results were compared to ground truth data. The classification accuracy of the first scene was only 56.8% whereas the scene of 28 May (65.9%) and the scene of 20 June (88.6%) achieved considerably higher accuracies. The results showed that high-resolution multispectral data are generally suitable to detect in-field heterogeneities of vegetation vitality though they are only moderately suitable for early detection of stress factors.
机译:确切了解作物病害时空动态,以实现针对特定地点的杀菌剂应用是至关重要的。遥感是监测农业场所内真菌疾病异质性的适当工具。但是,在早期生长阶段识别感染至关重要。本研究评估了多光谱遥感技术在作物病害多时相分析中的潜力。在波恩(德国)附近的一个试验测试场内,创建了一个6公顷大小的冬小麦田,其中种植了每种作物,每种作物可能感染三种不同病原体。使用两个多光谱QuickBird图像(04/22/2005和06/20/2005)和光谱重采样的HyMap图像(05/28/2005)来分析感染的时空动态。数据预处理包括使用DGPS测量的辐射度测量和精确的几何校正,这是精确农业应用的重要要求。收集地面真实数据,尤其是感染的严重程度,生长阶段/高度和分光光度计的测量值。使用混合调整的匹配过滤结果和植被指数的决策树应用于数据分类(感染和非感染区域)。将分类结果与地面真实数据进行比较。第一个场景的分类准确度仅为56.8%,而5月28日的场景(65.9%)和6月20日的场景(88.6%)的准确性更高。结果表明,高分辨率多光谱数据通常仅适合于早期检测应力因子,但通常适合于检测植被生命力的野外异质性。

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