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Unsupervised real-time constrained linear discriminant analysis to hyperspectral image classification

机译:高光谱图像分类的无监督实时约束线性判别分析

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We have proposed a constrained linear discriminant analysis (CLDA) approach for classifying the remotely sensed hyperspectral images. I is basic idea is to design an optimal linear transformation operator which can maximize the ratio of inter-class to intra-class distance while satisfying the constraint that the different class centers after transformation are aligned along different directions. Its major advantage over the traditional Fisher's linear discriminant analysis is that the classification can be achieved simultaneously with the transformation. The CLDA is a supervised approach, i.e., the class spectral signatures need to be known a priori. But, in practice, these informations may be difficult or even impossible to obtain. So in this paper we will extend the CLDA algorithm into an unsupervised version, where the class spectral signatures are to be directly generated from an unknown image scene. Computer simulation is used to evaluate how well the algorithm performs in terms of finding the pure signatures. We will also discuss how to implement the unsupervised CLDA algorithm in real-time for resolving the critical situations when the immediate data analysis results are required. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:我们提出了一种约束线性判别分析(CLDA)方法来对遥感高光谱图像进行分类。我的基本想法是设计一个最佳的线性变换算子,该算子可以最大化类间距离与类内距离的比率,同时满足变换后不同类中心沿不同方向对齐的约束。与传统的Fisher线性判别分析相比,它的主要优点是可以与变换同时实现分类。 CLDA是一种受监督的方法,即,需要事先知道类别的频谱特征。但是,实际上,这些信息可能难以获得甚至无法获得。因此,在本文中,我们将把CLDA算法扩展为无监督版本,在该版本中,将直接从未知图像场景生成类光谱特征。使用计算机仿真来评估算法在查找纯签名方面的性能。我们还将讨论如何实时实施无监督的CLDA算法,以解决需要即时数据分析结果时的紧急情况。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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