Derivation of stress severities in wheat from hyperspectral data using support vector regression

T. Mewes, B. Waske, J. Franke, G. Menz
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引用次数: 3

Abstract

The benefits and limitations of crop stress detection by hyperspectral data analysis have been examined in detail. It could thereby be demonstrated that even a differentiation between healthy and fungal infected wheat stands is possible and profits by analyzing entire spectra or specifically selected spectral bands/ranges. For reasons of practicability in agriculture, spatial information about the health status of crop plants beyond a binary classification would be a major benefit. Thus, the potential of hyperspectral data for the derivation of several disease severity classes or moreover the derivation of continual disease severity has to be further examined. In the present study, a state-of-the-art regression approach using support vector machines (SVM) has been applied to hyperspectral AISA-Dual data to derive the disease severity caused by leaf rust (Puccinina recondita) in wheat. Ground truth disease ratings were realized within an experimental field. A mean correlation coefficient of r=0.69 between severities and support vector regression predicted severities could be achieved using indepent training and test data. The results show that the SVR is generally suitable for the derivation of continual disease severity values, but the crucial point is the uncertainty in the reference severity data, which is used to train the regression.
利用支持向量回归从高光谱数据推导小麦的胁迫程度
本文详细讨论了利用高光谱数据分析进行作物胁迫检测的优点和局限性。因此,可以证明,即使是区分健康和真菌感染的小麦林也是可能的,并且可以通过分析整个光谱或特定选择的光谱带/范围来获利。出于农业实用性的考虑,超越二元分类的关于作物健康状况的空间信息将大有裨益。因此,必须进一步研究高光谱数据对几种疾病严重程度类别的推导或对连续疾病严重程度的推导的潜力。在本研究中,利用支持向量机(SVM)的最先进的回归方法对高光谱AISA-Dual数据进行了应用,以获得小麦叶锈病(Puccinina recondita)引起的疾病严重程度。实地真实疾病评级是在一个实验领域内实现的。使用独立的训练和测试数据,支持向量回归预测的严重程度与严重程度之间的平均相关系数r=0.69。结果表明,SVR一般适用于连续疾病严重程度值的推导,但关键是参考严重程度数据中的不确定性,该不确定性用于训练回归。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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