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Optimalwavelengths for an early identification of Cercospora beticola with Support Vector Machines based on hyperspectral reflection data

机译:基于高光谱反射数据的支持向量机早期识别锥状孢子虫的最佳波长

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Automatic classification of plant diseases at an early stage is vital for precision crop protection. Our aim was to identify sugar beet leaves inoculated with Cercospora beticola before symptoms are visible. Therefore hyperspectral reflection between 400 and 1050 nm was observed. Relevant wavelengths have to be found in order to implement practical sensor systems with reduced development costs. The main contribution of this study is to identify a minimal subset which is sufficient for separating healthy and inoculated leaves. The heuristic of Hall which analyses the relevance of a feature subset considering the intercorrelation among the features was applied. In order to select a good subset in a reasonable amount of time a genetic algorithm was used. This way enabled a subset of only seven out of 462 wavelengths, which nevertheless enabled us to identify low disease severity ≤ 5% with a classification accuracy of 84.3%. Disease severity above 5% was classified with 99.8%.
机译:早期植物疾病的自动分类对于精密作物保护至关重要。我们的宗旨是鉴定患有Cercospora Beticola之前的糖甜菜叶片在症状可见之前。因此观察到400和1050nm之间的高光谱反射。必须找到相关的波长,以便实施具有降低的开发成本的实用传感器系统。本研究的主要贡献是鉴定最小的子集,这足以用于分离健康和接种的叶子。展示了考虑特征中的特征子集的相关性的大厅的启发式。为了在合理的时间中选择合理的子集,使用遗传算法。这种方式使得462个波长中只有七个的子集,这然而使我们能够识别低疾病严重程度≤5%,分类精度为84.3%。疾病严重程度超过5%的分类为99.8%。

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