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Feature extraction based on discriminant analysis with penalty constraint for hyperspectral image classification

机译:基于判别限制对高光谱图像分类的判别分析的特征提取

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The main issue of hyperspectral image data (HSI) is its high dimensionality which conducts challenge in high dimensional data analysis community. Popular linear approaches can work effectively when the data is unimodal Gaussian class conditional independently distributions. Yet, they usually fail when applied to HSI data since the distribution of HSI data is usually unknown in reality. Locality preserving projection (LPP) addresses this problem approvingly, where the neighborhood information can be preserved in the reduced space. Based on typical behaviors of Fisher's linear discriminant analysis (LDA), a novel discriminant analysis framework under penalty constraint(PFDA), which extends the ideas of LDA and LPP, is developed in this paper. Benefiting from different construction of affinity matrix, our method can also preserve the locality embedding information effectively in the reduced space. Four types of PFDA are analyzed in this paper and the efficiency and effectiveness of proposed methods under penalty framework are demonstrated by both synthesis data and real hyperspectral remote sensing image data set.
机译:高光谱图像数据(HSI)的主要问题是其高维度在高维数据分析界中的挑战。流行的线性方法可以有效地工作,当数据是单向高斯级条件的独立分布时。然而,由于HSI数据的分布通常在现实中未知,因此它们通常在应用于HSI数据时失败。位置保存投影(LPP)批准地解决了这个问题,其中可以在减少空间中保留邻居信息。基于Fisher线性判别分析(LDA)的典型行为,本文开发了一种新的判别限制(PFDA)下的判别分析框架,其延伸了LDA和LPP的思想。受益于不同构造的亲和矩阵,我们的方法还可以在减少空间中有效地保护信息嵌入信息。本文分析了四种类型的PFDA,并通过综合数据和实际高光谱遥感图像数据集来证明所提出的刑罚框架的方法的效率和有效性。

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