Hyperspectral image classification based on spectra derivative features and locality preserving analysis

Zhen Ye, Mingyi He, J. Fowler, Q. Du
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引用次数: 10

Abstract

High spectral resolution and correlation hinders the application of traditional hyperspectral classification methods in the spectral domain. To address this problem, derivative information is studied in an effort to capture salient features of different land-cover classes. Two locality-preserving dimensionality-reduction methods-specifically, locality-preserving nonnegative matrix factorization and local Fisher discriminant analysis-are incorporated to preserve the local structure of neighboring samples. Since the statistical distribution of classes in hyperspectral imagery is often a complicated multimodal structure, classifiers based on a Gaussian mixture model are employed after feature extraction and dimension reduction. Finally, the classification results in the spectral as well as derivative domains are fused by a logarithmic-opinion-pool rule. Experimental results demonstrate that the proposed algorithms improve classification accuracy even in a small training-sample-size situation.
基于光谱导数特征和局域保持分析的高光谱图像分类
高光谱分辨率和相关性阻碍了传统高光谱分类方法在光谱域的应用。为了解决这个问题,研究了衍生信息,以努力捕捉不同土地覆盖类别的显著特征。采用两种保域降维方法,即保域非负矩阵分解和局部Fisher判别分析,来保持邻近样本的局部结构。由于高光谱图像中分类的统计分布往往是一个复杂的多模态结构,在进行特征提取和降维后,采用基于高斯混合模型的分类器。最后,利用对数意见池规则对谱域和导数域的分类结果进行融合。实验结果表明,即使在小样本情况下,该算法也能提高分类精度。
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