Hyperspectral Image Classification Based on Adaptive Global–Local Feature Fusion

Author:

Yang Chunlan12,Kong Yi1ORCID,Wang Xuesong1,Cheng Yuhu1

Affiliation:

1. School of Information and Control Engineering, China University of Mining and Technology, Xuzhou 221116, China

2. School of Electronics and Electrical Engineering, Bengbu University, Bengbu 233030, China

Abstract

Labeled hyperspectral image (HSI) information is commonly difficult to acquire, so the lack of valid labeled data becomes a major puzzle for HSI classification. Semi-supervised methods can efficiently exploit unlabeled and labeled data for classification, which is highly valuable. Graph-based semi-supervised methods only focus on HSI local or global data and cannot fully utilize spatial–spectral information; this significantly limits the performance of classification models. To solve this problem, we propose an adaptive global–local feature fusion (AGLFF) method. First, the global high-order and local graphs are adaptively fused, and their weight parameters are automatically learned in an adaptive manner to extract the consistency features. The class probability structure is then used to express the relationship between the fused feature and the categories and to calculate their corresponding pseudo-labels. Finally, the fused features are imported into the broad learning system as weights, and the broad expansion of the fused features is performed with the weighted broad network to calculate the model output weights. Experimental results from three datasets demonstrate that AGLFF outperforms other methods.

Funder

National Natural Science Foundation of China

Key Research and Development Program of Jiangsu Province

Key University Natural Science Research Program of Anhui Province

Publisher

MDPI AG

Reference50 articles.

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3. Prades, J., Safont, G., Salazar, A., and Vergara, L. (2020). Estimation of the Number of Endmembers in Hyperspectral Images Using Agglomerative Clustering. Remote Sens., 12.

4. Wang, H., Cheng, Y., and Wang, X. (2023). A Novel Hyperspectral Image Classification Method Using Class-Weighted Domain Adaptation Network. Remote Sens., 15.

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