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Feature Extraction of Hyperspectral Images Based on Preserving Neighborhood Discriminant Embedding

机译:基于保留邻域判别嵌入的高光谱图像特征提取

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A novel manifold learning feature extraction approach-preserving neighborhood discriminant embedding (PNDE) of hyperspectral image is proposed in this paper. The local geometrical and discriminant structure of the data manifold can be accurately characterized by within-class neighboring graph and between-class neighboring graph. Unlike manifold learning, such as LLE, Isomap and LE, which cannot deal with new test samples and images larger than 70×70, the method here can process full scene hyperspectral images. Experiments results on hyperspectral datasets and real-word datasets show that the proposed method can efficiently reduce the dimensionality while maintaining high classification accuracy. In addition, only a small amount of training samples are needed.
机译:提出了一种新的流形学习特征提取方法,并保留了高光谱图像的邻域判别嵌入(PNDE)。数据流形的局部几何和判别结构可以通过类内相邻图和类间相邻图来准确表征。与诸如LLE,Isomap和LE这样的流水线学习无法处理新的测试样本和大于70×70的图像不同,此处的方法可以处理全场景高光谱图像。在高光谱数据集和实词数据集上的实验结果表明,该方法能够有效降低维数,同时保持较高的分类精度。另外,仅需要少量的训练样本。

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