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Evaluation of Five Feature Selection Methods for Remote Sensing Data

机译:评估遥感数据的五种特征选择方法

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This paper evaluates five potential feature selection methods in the application of remote sensing. The five methods include the sequential forward floating selection, the joint pair approach, band selection based on variance, the principal component transform, and the visual-based selection. Optical-sensor image and synthetic aperture radar image are used for experiments. Several recommendations are made based on this study. For optical-sensor images, the five feature selection methods: sequential forward floating selection, joint pair, band selection, principal component transform, and visual-based selection could have about the same classification accuracy using two to five selected features. The case study has shown that the sequential forward floating selection is the best feature selection method for both optical and synthetic aperture radar feature image selection, followed by the joint pair (for two-feature selection), visual-based selection, band selection, and principal component transform. For band L and band X synthetic aperture radar feature images, entropy, homogeneity, inverse difference moment, and maximum probability, East to West and West to East semivariogram, the local mean value, maximum, and minimum are the best features of the cooccurrence matrix model, semivariogram model, and local statistic model. For Landsat TM images band 7, 4, 5, 3, 1, and 2 are significant feature images. Applying the sequential forward floating selection to select two to five features from the potential features can obtain classification accuracy greater than 90%.
机译:本文评估了遥感应用中的五种潜在特征选择方法。五种方法包括顺序前进浮动选择,联合对方法,基于方差的频带选择,主成分变换和基于视觉的选择。光学传感器图像和合成孔径雷达图像用于实验。基于这项研究进行了若干建议。对于光学传感器图像,五个特征选择方法:顺序前进浮动选择,关节对,频带选择,主成分变换和视觉的选择可以使用两到五个所选功能具有大约相同的分类精度。案例研究表明,顺序前进浮动选择是用于光学和合成孔径雷达特征图像选择的最佳特征选择方法,其次是关节对(用于两个特征选择),基于视觉的选择,频带选择,以及主成分变换。对于频段L和带X合成孔径雷达特征图像,熵,均匀性,反差时刻和最大概率,东向西和西向东半乐曲,局部均值,最大值和最小是Cooccurrence矩阵的最佳特征模型,半啮盘模型和局部统计模型。对于Landsat TM图像带7,4,5,3,1,2是重要的特征图像。应用顺序前进浮动选择从电位特征中选择两到五个特征可以获得大于90%的分类精度。

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