Feature extraction in hyperspectral imaging using adaptive feature selection approach

J. Rochac, N. Zhang
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引用次数: 16

Abstract

This paper presents the design and implementation of a new adaptive feature selection technique for spectral band selection prior to classification of remotely sensed hyperspectral images. This approach integrates spectral band selection and hyperspectral image classification in an adaptive fashion, with the ultimate goal of improving the analysis and interpretation of hyperspectral imaging. The four components in the proposed adaptive feature selection, including local gradient calculation, reference cluster determination, prototype classes building using a fuzzy classifier, and relevant bands selection are presented in detail. The hyperspectral image data set from the ROSIS (Reflective Optics System Imaging Spectrometer) were used as training and testing data. We tested the effect of the approach on different number of selected spectral bands. The classification accuracy for AFS was illustrated by the ROC curve. In addition, in order to compare the proposed method with other methods, we applied the proposed adaptive feature selection (AFS) approach and the principal component analysis (PCA) method to the GentleBoost classifier using different number of spectral bands after processing the ROSIS Pavia scene. The experimental results demonstrated that the classification accuracies obtained by the AFS method are higher than that of the PCA method. In addition, for each method, the higher the number of spectral bands, the higher the classification accuracy.
基于自适应特征选择方法的高光谱成像特征提取
提出了一种新的遥感高光谱图像分类前波段选择自适应特征选择技术的设计与实现。该方法以自适应的方式将光谱波段选择和高光谱图像分类相结合,最终目的是提高高光谱成像的分析和解释。详细介绍了自适应特征选择的四个组成部分:局部梯度计算、参考聚类确定、模糊分类器构建原型类和相关波段选择。使用ROSIS(反射光学系统成像光谱仪)的高光谱图像集作为训练和测试数据。我们测试了该方法在不同数量的选定光谱波段上的效果。ROC曲线表示AFS的分类精度。此外,为了与其他方法进行比较,我们将所提出的自适应特征选择(AFS)方法和主成分分析(PCA)方法应用于对ROSIS Pavia场景进行处理后的不同光谱带数的绅士boost分类器。实验结果表明,AFS方法的分类精度高于PCA方法。此外,每种方法的光谱波段数越多,分类精度越高。
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