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Feature selection using rough set theory for object-oriented classification of remote sensing imagery

机译:基于粗糙集理论的特征选择在遥感影像面向对象分类中的应用

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In object-oriented remote sensing imagery classification, numerous spectral, texture, shape and contextual features can be derived and used to discriminate classes and produce finer map. The high-dimensional features may induce Hughes phenomenon that classification accuracy decreases with more features involved. To improve the classification accuracy and efficiency, a hybrid feature selection method combined the relative attribute reduction and the significance estimation of features is proposed. This method can efficiently select features and solve the problems of combination explosion. Object-oriented classification of Quickbird image shows the selected features can correctly distinguish most of the objects with an overall accuracy of 86%.
机译:在面向对象的遥感影像分类中,可以导出大量的光谱,纹理,形状和上下文特征,并用于区分类别并生成更精细的地图。高维特征可能会导致休斯现象,即随着更多特征的出现,分类精度会降低。为了提高分类的准确性和效率,提出了一种混合特征选择方法,将特征的相对属性约简和显着性估计相结合。该方法可以有效地选择特征,解决组合爆炸的问题。 Quickbird图像的面向对象分类显示,所选功能可以正确区分大多数对象,总体准确性为86%。

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