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Airborne hyperspectral imaging for the detection of powdery mildew in wheat

机译:机载高光谱成像技术检测小麦白粉病

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Plant stresses, in particular fungal diseases, show a high variability in spatial and temporal dimension with respect to their impact on the host. Recent "Precision Agriculture"-techniques allow for a spatially and temporally adjusted pest control that might reduce the amount of cost-intensive and ecologically harmful agrochemicals. Conventional stress-detection techniques such as random monitoring do not meet demands of such optimally placed management actions. The prerequisite is an accurate sensor-based detection of stress symptoms. The present study focuses on a remotely sensed detection of the fungal disease powdery mildew (Blumeria graminis) in wheat, Europe's main crop. In a field experiment, the potential of hyperspectral data for an early detection of stress symptoms was tested. A sophisticated endmember selection procedure was used and, additionally, a linear spectral mixture model was applied to a pixel spectrum with known characteristics, in order to derive an endmember representing 100% powdery mildew-infected wheat. Regression analyses of matched fraction estimates of this endmember and in-field-observed powdery mildew severities showed promising results (r=0.82 and r~2=0.67).
机译:植物胁迫,特别是真菌疾病,就其对宿主的影响而言,在空间和时间维度上表现出高度的可变性。最近的“精确农业”技术允许在空间和时间上进行虫害控制,从而可能减少成本密集型和对生态有害的农药的数量。诸如随机监视之类的常规压力检测技术不能满足这种最佳放置的管理动作的要求。前提条件是基于压力的准确的基于传感器的压力症状检测。本研究的重点是遥感检测欧洲主要农作物小麦中的真菌病白粉病(Blumeria graminis)。在现场实验中,测试了高光谱数据用于早期发现压力症状的潜力。使用复杂的端成员选择程序,此外,将线性光谱混合模型应用于具有已知特征的像素光谱,以得出代表100%被白粉病感染的小麦的端成员。对该末端成员的匹配分数估计值和实地观察到的白粉病严重程度的回归分析显示出令人鼓舞的结果(r = 0.82和r〜2 = 0.67)。

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