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Transferring spectral libraries of canopy reflectance for crop classification using hyperspectral remote sensing data.

机译:使用高光谱遥感数据传输冠层反射光谱库进行作物分类。

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Spectral library search is emerging as an automated method for exploiting finer spectral details available in hyperspectral remote sensing data. We report on the potential of transferring independent crop spectral libraries for classifying various agricultural crops using airborne hyperspectral image. Spectral libraries constructed from multi-season field reflectance measurements for five agricultural crops (alfalfa, winter barley, winter rape, winter rye, and winter wheat) are used for the per-pixel and per-field classification of HyMAP airborne hyperspectral image by the spectral library search method. Results obtained from this method are compared with the results obtained from the per-field object-oriented, and per-pixel support vector machines (SVM) supervised image classification using image-based training data. Results from the spectral library search approach (best overall accuracy: 82%) exhibit strong correlation with the results obtained from both the object-oriented and SVM-supervised classification approach. However, per-field object-oriented classification shows moderate increase in the classification performance. In spite of significant reduction in the overall accuracy, the resultant overall accuracy of about 82% obtained from the spectral library search is fairly high, given the large spatial and temporal differences maintained between the image data and the field reflectance measurements. Results indicate the existence of a meaningful spectral matching between image and reflectance library spectra for some of the crops considered, showing their potential for transferring reflectance spectral libraries for image classification. Incomplete library coverage and phenological variations are found to be the key issues that influence the prospect of transferring spectral libraries for image classification.Digital Object Identifier http://dx.doi.org/10.1016/j.biosystemseng.2011.07.002
机译:光谱库搜索正在成为一种自动方法,用于利用高光谱遥感数据中可用的更精细的光谱细节。我们报告了使用机载高光谱图像转移独立的农作物光谱库对各种农作物进行分类的潜力。从五种农作物(苜蓿,冬大麦,冬油菜,冬黑麦和冬小麦)的多季节场反射率测量结果构建的光谱库用于通过光谱对HyMAP机载高光谱图像进行逐像素和逐场分类库搜索方法。使用基于图像的训练数据,将从该方法获得的结果与从每个对象面向对象的,每个像素支持向量机(SVM)监督的图像分类进行比较。光谱库搜索方法的结果(最佳总体准确度:82%)与从面向对象和SVM监督的分类方法获得的结果密切相关。但是,按字段的面向对象分类显示出分类性能的适度提高。尽管整体精度显着降低,但考虑到图像数据与场反射率测量值之间存在较大的时空差异,从光谱库搜索中获得的总体精度约为82%。结果表明,所考虑的某些农作物的图像和反射库光谱之间存在有意义的光谱匹配,显示了它们为图像分类传输反射光谱库的潜力。发现不完整的库覆盖范围和物候变化是影响为图像分类传输光谱库的前景的关键问题。数字对象标识符http://dx.doi.org/10.1016/j.biosystemseng.2011.07.002

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