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Approximate sparse spectral clustering based on local information maintenance for hyperspectral image classification

机译:基于局部信息维护的稀疏谱聚类用于高光谱图像分类

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摘要

Sparse spectral clustering (SSC) has become one of the most popular clustering approaches in recent years. However, its high computational complexity prevents its application to large-scale datasets such as hyperspectral images (HSIs). In this paper, we propose two efficient approximate sparse spectral clustering methods for HSIs clustering in which clustering performance is improved by utilizing local information among the data. Firstly, we construct a smaller representative dataset on which sparse spectral clustering is performed. Then the labels of ground object are extending to whole dataset based on the local information according to two extending strategies. The first one is that the local interpolation is utilized to improve the extension of the clustering result. The other one is that the label extension is turned to a problem of subspace embedding, and is fulfilled by locally linear embedding (LLE). Several experiments on HSIs demonstrated that the proposed algorithms are effective for HSIs clustering.
机译:稀疏光谱聚类(SSC)已成为近年来最受欢迎的聚类方法之一。但是,其高计算复杂性使其无法应用于大规模数据集,例如高光谱图像(HSI)。在本文中,我们提出了两种有效的近似稀疏谱聚类方法用于HSI聚类,其中利用数据之间的局部信息来提高聚类性能。首先,我们构建一个较小的代表性数据集,在该数据集上执行稀疏光谱聚类。然后根据两种扩展策略,根据局部信息将地面物体的标签扩展到整个数据集。第一个是利用局部插值来改善聚类结果的扩展。另一个问题是标签扩展变成了子空间嵌入的问题,并通过局部线性嵌入(LLE)来实现。在HSI上的一些实验表明,所提出的算法对于HSI聚类是有效的。

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