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Local-Manifold-Learning-Based Graph Construction for Semisupervised Hyperspectral Image Classification

机译:半监督高光谱图像分类的基于局部流形学习的图构造

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摘要

Graph construction, which is at the heart of graph-based semisupervised learning (SSL), is investigated by using manifold learning (ML) approaches. Since each ML method can be demonstrated to correspond to a specific graph, we build the relation between ML and SSL via the graph, where ML methods are employed for graph construction. Moreover, sparsity is important for the efficiency of SSL algorithms, and therefore, local ML (LML)-method-based sparse graphs are utilized. The LML-based graphs are able to capture the local geometric properties of hyperspectral data and, thus, are beneficial for classification of data with complex geometry and multiple submanifolds. In experiments with Hyperion and AVIRIS hyperspectral data, graphs constructed by two LML methods, namely, locally linear embedding and local tangent space alignment (LTSA), performed better than several popular graph construction methods, and the highest accuracies were obtained by using graphs provided by LTSA.
机译:通过使用流形学习(ML)方法研究了基于图的半监督学习(SSL)核心的图结构。由于可以证明每种ML方法都对应于特定的图,因此我们通过该图建立ML和SSL之间的关系,其中ML方法用于图的构建。此外,稀疏性对于SSL算法的效率很重要,因此,利用了基于局部ML(LML)方法的稀疏图。基于LML的图能够捕获高光谱数据的局部几何特性,因此,对于具有复杂几何形状和多个子流形的数据分类非常有利。在使用Hyperion和AVIRIS高光谱数据进行的实验中,通过两种LML方法(即局部线性嵌入和局部切线空间对齐(LTSA))构造的图形比几种流行的图形构造方法具有更好的性能,并且使用LTSA。

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