Classification of Hyperspectral image based on superpixel segmentation and DPC algorithm

Nian Chen, Hao Zhou
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Abstract

In this paper, we propose an algorithm named SS_DPC for hyperspectral image classification. First, the image is segmented into hyperpixels according to spatial and spectral information, which are used as basic units for clustering instead of pixels. Computing the inner product of the local density and the minimum inter_cluster distance for each unit, Density peaks clustering (DPC) algorithm sorts products in descending order and selects the globally optimal solutions as cluster centers. The following conclusions have been verified through experiments:(1)Proper quantity of superpixel (K value) can improve the consistency between clustering results and actual values effectively.(2)Image segmentation can weaken the interference of abnormal data, so the ARI values of SS_DPC, SS_K_Means are higher than that of K_Means significantly.(3)SS_DPC algorithm is much better than other clustering algorithms in precision and robustness.
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基于超像素分割和DPC算法的高光谱图像分类
本文提出了一种基于SS_DPC的高光谱图像分类算法。首先,根据空间和光谱信息将图像分割成超像素,超像素代替像素作为聚类的基本单位;密度峰聚类(DPC)算法通过计算每个单元的局部密度和最小簇间距离的内积,对产品进行降序排序,并选择全局最优解作为聚类中心。通过实验验证了以下结论:(1)适当数量的超像素(K值)可以有效提高聚类结果与实际值的一致性(2)图像分割可以减弱异常数据的干扰,因此SS_DPC、SS_K_Means的ARI值明显高于K_Means的ARI值(3)SS_DPC算法在精度和鲁棒性上都明显优于其他聚类算法。
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