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Locality-preserving discriminant analysis and Gaussian mixture models for spectral-spatial classification of hyperspectral imagery

机译:高光谱影像光谱空间分类的保局判别分析和高斯混合模型

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Traditional hyperspectral image classification typically uses raw spectral signatures or simple spatial characteristics such as textural features without considering the correlation between spectral and spatial information. In this paper, we propose a spectral-spatial hyperspectral image classification based on a structured multi-modal statistical model. A 3D wavelet transform is employed to extract relevant features from every pixel and its neighboring pixels; these features quantify local orientation and scale characteristics. Local Fisher's discriminant analysis is then used to project this high-dimensional wavelet coefficient space onto a lower-dimensional subspace while preserving the multi-modal structure of the statistical distributions. The proposed classification framework then employs a Gaussian mixture model classifier in this feature subspace. Experimental results at hyperspectral image-classification tasks show that the proposed approach substantially outperforms traditional methods.
机译:传统的高光谱图像分类通常使用原始光谱特征或简单的空间特征(例如纹理特征),而不考虑光谱和空间信息之间的相关性。在本文中,我们提出了一种基于结构化多模态统计模型的光谱空间高光谱图像分类。采用3D小波变换从每个像素及其相邻像素中提取相关特征。这些特征量化了局部取向和尺度特征。然后使用局部Fisher判别分析将这个高维小波系数空间投影到一个低维子空间上,同时保留统计分布的多峰结构。然后,提出的分类框架在该特征子空间中采用了高斯混合模型分类器。在高光谱图像分类任务上的实验结果表明,该方法大大优于传统方法。

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