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Semisupervised Sparse Manifold Discriminative Analysis for Feature Extraction of Hyperspectral Images

机译:半监督稀疏流形判别分析的高光谱图像特征提取

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The graph embedding (GE) framework is very useful to extract the discriminative features of hyperspectral images (HSIs) for classification. However, a major challenge of GE is how to select a proper neighborhood size for graph construction. To overcome this drawback, a new semisupervised discriminative learning algorithm, which is called the semisupervised sparse manifold discriminative analysis (S3MDA) method, was proposed by using manifold-based sparse representation (MSR) and GE. The proposed algorithm utilizes MSR to obtain the sparse coefficients of labeled and unlabeled samples. Then, it constructs a within-class graph and a between-class graph using the sparse coefficients of labeled samples, as well as an unsupervised graph with the sparse coefficients of unlabeled samples. Finally, it uses these graphs to obtain a projection matrix for feature extraction (FE) of HSI in a low-dimensional space. The S3MDA method not only inherits the merits of MSR to reveal the sparse manifold properties of data but also enhances interclass separability and intraclass compactness to improve the discriminating power for classification. Extensive experiments on two real HSI data sets obtained with a reflective optics system imaging spectrometer and an airborne visible/infrared imaging spectrometer show that the proposed algorithm is significantly superior to other state-of-the-art FE methods in terms of classification accuracy.
机译:图嵌入(GE)框架对于提取高光谱图像(HSI)的判别特征进行分类非常有用。但是,GE的主要挑战是如何为图形构建选择合适的邻域大小。为了克服这个缺点,提出了一种新的半监督判别学习算法,即基于流形的稀疏表示(MSR)和GE,称为半监督稀疏流形判别分析(S3MDA)方法。所提出的算法利用MSR来获得标记和未标记样本的稀疏系数。然后,它使用标记的样本的稀疏系数构造一个类内图和类间图,以及一个带有未标记的样本稀疏系数的无监督图。最后,它使用这些图来获得用于在低维空间中对HSI进行特征提取(FE)的投影矩阵。 S3MDA方法不仅继承了MSR的优点,揭示了数据的稀疏流形特性,而且还增强了类间的可分离性和类内的紧致性,从而提高了分类的识别能力。利用反射光学系统成像光谱仪和机载可见/红外成像光谱仪获得的两个实际HSI数据集的大量实验表明,该算法在分类精度方面明显优于其他最新的有限元方法。

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