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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Dimensionality Reduction With Enhanced Hybrid-Graph Discriminant Learning for Hyperspectral Image Classification
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Dimensionality Reduction With Enhanced Hybrid-Graph Discriminant Learning for Hyperspectral Image Classification

机译:具有增强的混合图判别学习的维数减少,用于高光谱图像分类

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Dimensionality reduction (DR) is an important way of improving the classification accuracy of a hyperspectral image (HSI). Graph learning, which can effectively reveal the intrinsic relationships of data, has been widely used in the case of HSIs. However, most of them are based on a simple graph to represent the binary relationships of data. An HSI contains complex high-order relationships among different samples. Therefore, in this article, we propose a hybrid-graph learning method to reveal the complex high-order relationships of the HSI, termed enhanced hybrid-graph discriminant learning (EHGDL). In EHGDL, an intraclass hypergraph and an interclass hypergraph are constructed to analyze the complex multiple relationships of a HSI. Then, a supervised locality graph is applied to reveal the binary relationships of a HSI which can form the complementarity of a hypergraph. Simultaneously, we also construct a weighted neighborhood margin model to boost the difference of samples from different classes. Finally, we design a DR model based on the intraclass hypergraph, the interclass hypergraph, the supervised locality graph, and the weighted neighborhood margin to improve the compactness of the intraclass samples and the separability of the interclass samples, and an optimal projection matrix can be achieved to extract the low-dimensional embedding features of the HSI. To demonstrate the effectiveness of the proposed method, experiments have been conducted on the Indian Pines, PaviaU, and HoustonU data sets. The experimental results show that EHGDL can generate better classification performance compared with some related DR methods. As a result, EHGDL can better reveal the complex intrinsic relationships of a HSI by the complementarity of different characteristics and enhance the discriminant performance of land-cover types.
机译:减少维度(DR)是提高高光谱图像(HSI)的分类准确性的重要途径。图表学习,可以有效地揭示数据内在关系,已被广泛应用于HSI的情况。但是,大多数基于简单的图表来表示数据的二进制关系。 HSI包含不同样本之间的复杂高阶关系。因此,在本文中,我们提出了一种混合图学习方法来揭示HSI的复杂高阶关系,称为增强的混合图判别学习(EHGDL)。在EHGDL中,构建一个脑上的超图和杂类超图来分析HSI的复杂多个关系。然后,应用了监督的局部性图来揭示可以形成超图的互补性的HSI的二进制关系。同时,我们还构造了加权邻域边缘模型,以提高来自不同类别的样本的差异。最后,我们设计了基于Intraclass Repread,Cressclass Hypergraph,监督局部图和加权邻域余量的DR模型,以提高内部样品的紧凑性和杂体样品的可分离矩阵,以及最佳投影矩阵实现了提取HSI的低维嵌入功能。为了证明所提出的方法的有效性,在印度松树,帕培和休斯隆数据集中进行了实验。实验结果表明,与一些相关的DR方法相比,EHGDL可以产生更好的分类性能。结果,EHGDL可以通过不同特征的互补性更好地揭示HSI的复杂内在关系,并提高陆地覆盖类型的判别性能。

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