Unsupervised Multiview Graph Contrastive Feature Learning for Hyperspectral Image Classification

Chang, Yuan, Liu, Quanwei, Zhang, Yuxiang, and Dong, Yanni (2024) Unsupervised Multiview Graph Contrastive Feature Learning for Hyperspectral Image Classification. IEEE Transactions on Geoscience and Remote Sensing, 62. 5524314.

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Abstract

As a popular deep learning (DL) algorithm, graph neural network (GNN) has been widely used in hyperspectral image (HIS) classification. However, most of the GNN-based classification algorithms are concentrated in the field of semisupervision, which heavily relies on the quantity and quality of samples. To solve this problem, we propose an unsupervised multiview graph contrastive (UMGC) feature learning algorithm to explore the deep semantic features of HSIs without being constrained by samples. First, we construct multiview adjacency matrixes from spatial and spectral directions. Second, the adaptive data augmentation method is used to selectively enhance the topology and attribute structure of the graph. Thereafter, features are extracted by using a contrastive loss to maximize the similarity between the two views. Finally, we tested the model's performance based on multiple evaluation methods. Experimental results on three publicly available hyperspectral datasets show that the proposed UMGC can have better classification performance compared with other state-of-the-art unsupervised feature extraction (FE) methods.

Item ID: 87417
Item Type: Article (Research - C1)
ISSN: 1558-0644
Keywords: Contrastive learning (CL), graph convolutional network (GCN), hyperspectral image (HIS) classification, unsupervised feature learning
Copyright Information: © 2024 IEEE. Personal use is permitted, but republication/redistribution requires IEEE permission.
Date Deposited: 02 Dec 2025 04:48
FoR Codes: 40 ENGINEERING > 4013 Geomatic engineering > 401399 Geomatic engineering not elsewhere classified @ 100%
SEO Codes: 28 EXPANDING KNOWLEDGE > 2801 Expanding knowledge > 280110 Expanding knowledge in engineering @ 100%
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