Analysis of PCA Based Feature Extraction Methods for Classification of Hyperspectral Image

U. Ali, Md. Ali Hossain, Md. Rashedul Islam
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引用次数: 8

Abstract

Hyperspectral Image (HSI) is a rich source of information for the analysis of the earth's surface. HSI produces a rich set of both spectral and spatial information for possible recognition of earth materials, minerals and vegetation categories. Since HSI has high dimensional spectral information so that, feature extraction methods has been used to reduce the dimensions. The most widely used feature extraction method Principal Component Analysis (PCA) is applied in HSI for dimension reduction. The aim of this paper is to analyze PCA and its different variants Segmented-PCA (SPCA), Folded-PCA (FPCA), and its nonlinear approach Kernel-PCA (KPCA) for effective feature extraction and classification of HSI. Moreover, the noise adjusted methods Minimum Noise fraction (MNF) and its variants segmented MNF is also studied for comparing the feature extraction methods. For comparing the robustness of the studied methods, two real HSI is used for the experiments. The experiments show that the classification accuracy of the MNF method are 95.94% and 97.61% for AVIRIS and HYDICE datasets respectively which outperforms that other PCA based methods.
基于PCA的高光谱图像分类特征提取方法分析
高光谱图像(HSI)是分析地球表面的丰富信息来源。HSI产生了一套丰富的光谱和空间信息,可以识别地球物质、矿物和植被类别。由于HSI具有高维的光谱信息,因此采用特征提取方法进行降维。在HSI中应用最广泛的特征提取方法主成分分析(PCA)进行降维。本文的目的是分析主成分分析及其不同变体分割主成分分析(SPCA)、折叠主成分分析(FPCA)及其非线性方法核主成分分析(KPCA),以便有效地提取恒生指数的特征并进行分类。此外,还研究了最小噪声分数(Minimum noise fraction, MNF)及其变体分割MNF,对特征提取方法进行了比较。为了比较所研究方法的稳健性,使用了两个真实的HSI进行实验。实验表明,MNF方法对AVIRIS和HYDICE数据集的分类准确率分别为95.94%和97.61%,优于其他基于PCA的方法。
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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