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Unsupervised Constrained Linear Fisher's Discriminant Analysis for Hyperspectral Image Classification

机译:高光谱图像分类的无监督约束线性Fisher判别分析

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Fisher's linear discriminant analysis (FLDA) has been widely used in pattern classification due to its criterion, called Fisher's ratio, based on the ratio of between-class variance to within-class variance. Recently, a linear constrained discriminant analysis (LCDA) was developed for hyperspectral image classification where Fisher's ratio was replaced with the ratio of inter-distance to intra-distance and the target signatures were constrained to orthogonal directions. This paper directly extends the FLDA to constrained Fisher's linear discriminant analysis (CFLDA), which uses Fisher's ratio as a classification criterion. Since CFLDA is supervised which requires a set of training samples, this paper further extends the CFLDA to an unsupervised CFLDA (UCFLDA) by including a new unsupervised training sample generation algorithm to automatically produce a sample pool of training data to be used for CFLDA. In order to determine the number of classes, p, to be classified, a newly developed concept, called virtual dimensionality (VD) is used to estimate the p where a Neyman-Pearson-based eigen-analysis approach developed by Harsanyi, Farrand and Chang, called noise-whitened HFC (NWHFC)'s method, is implemented to find the VD. The experimental results have shown that the proposed UCFLDA perform effectively for HYDICE data and provides a promising unsupervised classification technique for hyperspectral imagery.
机译:Fisher线性判别分析(FLDA)已被广泛用于模式分类,这是因为其标准称为Fisher比率,该比率基于类间方差与类内方差之比。最近,开发了用于高光谱图像分类的线性约束判别分析(LCDA),其中费舍尔比率被距离间距离之内的比率代替,并且目标特征被限制在正交方向上。本文将FLDA直接扩展到约束Fisher线性判别分析(CFLDA),该分析使用Fisher比率作为分类标准。由于CFLDA是受监督的,需要一组训练样本,因此本文将CFLDA扩展到无监督的CFLDA(UCFLDA),方法是包括新的无监督的训练样本生成算法,以自动生成用于CFLDA的训练数据样本池。为了确定要分类的类数p,使用了一个新开发的概念,称为虚拟维数(VD)来估计p,其中Harsanyi,Farrand和Chang所开发的基于Neyman-Pearson的本征分析方法实施了称为白噪声HFC(NWHFC)的方法来查找VD。实验结果表明,所提出的UCFLDA对HYDICE数据有效,并且为高光谱图像提供了有希望的无监督分类技术。

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