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Feature Extraction with Modified Fisher's Linear Discriminant Analysis

机译:修正Fisher线性判别分析的特征提取

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Hyperspectral remotely sensed imagery is rapidly developed recently. It collects radiance from the ground with hundreds of channels which results in hundreds of co-registered images. How to process this huge amount of data is a great challenge. Feature extraction methods are designed to remove redundant and remain useful information in the hyperspectral images. Many feature extraction approaches have been developed in the past, including the well known Principal Component Analysis (PCA) and Fisher's Linear Discriminant Analysis (LDA). The PCA is designed to search for directions with maximum variances. It compress most of the signal in the first a few principal components, but the experimental result shows that the extracted features by PCA does not perform well for target classification. On the other hand, Fisher's LDA is designed target classification, which maximize the between class distance while minimize the within class distance, but it can only find number of features which equal to the number of classes minus one. This will become a problem for subpixel target classification. Under this circumstance, this paper presents a modified Fisher's LDA which can extract features more than number of classes. The experiments are conducted to compare the classification results of PCA, Fisher's LDA and proposed method.
机译:高光谱遥感影像近来发展迅速。它通过数百个通道从地面收集辐射,从而生成数百个共同注册的图像。如何处理海量数据是一个巨大的挑战。特征提取方法旨在消除冗余并在高光谱图像中保留有用的信息。过去已经开发了许多特征提取方法,包括众所周知的主成分分析(PCA)和费舍尔线性判别分析(LDA)。 PCA旨在搜索方差最大的方向。它压缩了前几个主要成分中的大部分信号,但是实验结果表明,PCA提取的特征对于目标分类效果不佳。另一方面,费舍尔的LDA被设计为目标分类,它最大化了类之间的距离而最小化了类内距离,但是它只能找到等于类数减一的特征数量。这将成为亚像素目标分类的问题。在这种情况下,本文提出了一种改进的Fisher的LDA,该LDA可以提取比类数更多的特征。进行实验以比较PCA,Fisher LDA和拟议方法的分类结果。

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