Feature extraction for hyperspectral image classification

Md. Palash Uddin, Md. Al Mamun, Md. Ali Hossain
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引用次数: 37

Abstract

Remote sensing hyperspectral image (HSI) contains important information of ground surface as a set of hundreds of narrow and contiguous spectral bands. For effective classification of hyperspectral images, feature reduction techniques through feature extraction and feature selection approaches are applied to improve the classification performance. Principal Component Analysis (PCA) is the widely used feature extraction method for dimensionality reduction. In this paper, PCA and its linear variants such as segmented-PCA (SPCA) and folded-PCA (FPCA) together with nonlinear variants kernel-PCA (KPCA) and Kernel Entropy Component Analysis (KECA) have been studied to effectively extract the features for classification task. The feature selection over the new transformed features was carried out using cumulative-variance accumulation based approach except for KECA that employs Renyi entropy based feature selection. The studied methods are compared using real hyperspectral image. The experimental result shows that the classification accuracy of KPCA (95.9245%) and KECA (95.6262%) outperforms FPCA (95.1292%). However, the FPCA provides the less space complexity.
基于特征提取的高光谱图像分类
遥感高光谱图像是由数百个狭窄而连续的光谱带组成的集合,包含了地表的重要信息。为了对高光谱图像进行有效分类,采用特征提取和特征选择方法的特征约简技术来提高分类性能。主成分分析(PCA)是一种应用广泛的降维特征提取方法。本文研究了主成分分析及其线性变体如分割主成分分析(SPCA)和折叠主成分分析(FPCA),以及非线性变体核主成分分析(KPCA)和核熵成分分析(kea),以有效地提取分类任务的特征。除kea采用基于Renyi熵的特征选择外,其他特征选择均采用基于累积方差积累的方法。用实际高光谱图像对所研究的方法进行了比较。实验结果表明,KPCA(95.9245%)和kea(95.6262%)的分类准确率优于FPCA(95.1292%)。然而,FPCA提供了更少的空间复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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