Abstract
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.
Funder
Natural Science Foundation of Hunan Province
National Natural Science Foundation of China
Changsha Natural Science Foundation
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference48 articles.
1. Material Based Salient Object Detection from Hyperspectral Images;Liang;Pattern Recognit.,2018
2. Self-Supervised Learning-Based Oil Spill Detection of Hyperspectral Images;Duan;Sci. China Technol. Sci.,2022
3. Hyperspectral Anomaly Detection with Kernel Isolation Forest;Li;IEEE Trans. Geosci. Remote Sens.,2020
4. Shadow Removal of Hyperspectral Remote Sensing Images With Multiexposure Fusion;Duan;IEEE Trans. Geosci. Remote Sens.,2022
5. Duan, P., Lai, J., Ghamisi, P., Kang, X., Jackisch, R., Kang, J., and Gloaguen, R. Component Decomposition-Based Hyperspectral Resolution Enhancement for Mineral Mapping. Remote Sens., 2020. 12.
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