Hyperspectral Image Analysis--A Robust Algorithm Using Support Vectors and Principal Components

S. S, M. Wilscy
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引用次数: 11

Abstract

This paper presents a new algorithm for hyperspectral image analysis using spectral-angle based support vector clustering (SVC) and principal component analysis (PCA). In the classical approach to hyper-spectral dimensionality reduction based on principal component analysis (PCA), no meaning or behavior of the spectrum is considered and results are influenced by majority components in the scene. A spectral angle based classification before dimensionality reduction is a possible solution to this problem. Clustering based on support vectors using spectral based kernels is proposed in this work, which is found to generate good results in hyperspectral image classification. The algorithm is tested with two hyperspectral image data sets of 210 bands each, which are taken with hyper-spectral digital imagery collection experiment (HYDICE) air-borne sensors. A comparative study of the proposed algorithm and other two conventional algorithms (PCA alone and PCA with spectral angle mapping (SAM)) is also done
高光谱图像分析——基于支持向量和主成分的鲁棒算法
提出了一种基于光谱角的支持向量聚类(SVC)和主成分分析(PCA)的高光谱图像分析新算法。经典的基于主成分分析(PCA)的高光谱降维方法不考虑光谱的意义和行为,结果受场景中大多数成分的影响。在降维之前基于光谱角的分类是解决这一问题的一种可能方法。本文提出了基于支持向量的基于光谱核的聚类方法,该方法在高光谱图像分类中具有良好的效果。采用高光谱数字图像采集实验(HYDICE)机载传感器采集的210个波段的高光谱图像数据集对算法进行了测试。并将该算法与其他两种传统算法(单独主成分分析和主成分分析结合光谱角映射(SAM))进行了比较研究
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