School of Computer and Electrical Engineering, Hunan University of Arts and Science, Changde 415000, China.
Center for International Education, Philippine Christian University, Manila 1004, Philippines.
Sensors (Basel). 2022 Nov 4;22(21):8502. doi: 10.3390/s22218502.
Hyperspectral image classification has received a lot of attention in the remote sensing field. However, most classification methods require a large number of training samples to obtain satisfactory performance. In real applications, it is difficult for users to label sufficient samples. To overcome this problem, in this work, a novel multi-scale superpixel-guided structural profile method is proposed for the classification of hyperspectral images. First, the spectral number (of the original image) is reduced with an averaging fusion method. Then, multi-scale structural profiles are extracted with the help of the superpixel segmentation method. Finally, the extracted multi-scale structural profiles are fused with an unsupervised feature selection method followed by a spectral classifier to obtain classification results. Experiments on several hyperspectral datasets verify that the proposed method can produce outstanding classification effects in the case of limited samples compared to other advanced classification methods. The classification accuracies obtained by the proposed method on the Salinas dataset are increased by 43.25%, 31.34%, and 46.82% in terms of overall accuracy (OA), average accuracy (AA), and Kappa coefficient compared to recently proposed deep learning methods.
高光谱图像分类在遥感领域受到了广泛关注。然而,大多数分类方法需要大量的训练样本才能获得满意的性能。在实际应用中,用户很难标注足够的样本。为了解决这个问题,在这项工作中,我们提出了一种新的多尺度超像素引导结构轮廓方法,用于高光谱图像的分类。首先,通过平均融合方法降低光谱数(原始图像)。然后,借助超像素分割方法提取多尺度结构轮廓。最后,通过无监督特征选择方法融合提取的多尺度结构轮廓,再结合光谱分类器得到分类结果。在几个高光谱数据集上的实验验证了与其他先进的分类方法相比,在样本有限的情况下,所提出的方法可以产生出色的分类效果。与最近提出的深度学习方法相比,所提出的方法在萨利纳斯数据集上的整体精度(OA)、平均精度(AA)和 Kappa 系数方面分别提高了 43.25%、31.34%和 46.82%。