17 January 2024 Multiscale graph convolution residual network for hyperspectral image classification
Ao Li, Yuegong Sun, Cong Feng, Yuan Cheng, Liang Xi
Author Affiliations +
Abstract

In recent years, graph convolutional networks (GCNs) have attracted increased attention in hyperspectral image (HSI) classification through the utilization of data and their connection graph. However, most existing GCN-based methods have two main drawbacks. First, the constructed graph with pixel-level nodes loses many useful spatial information while high computational cost is required due to large graph size. Second, the joint spatial-spectral structure hidden in HSI are not fully explored for better neighbor correlation preservation, which limits the GCN to achieve promising performance on discriminative feature extraction. To address these problems, we propose a multiscale graph convolutional residual network (MSGCRN) for HSI classification. First, to explore the local spatial–spectral structure, superpixel segmentation is performed on the spectral principal component of HSI at different scales. Thus, the obtained multiscale superpixel areas can capture rich spatial texture division. Second, multiple superpixel-level subgraphs are constructed with adaptive weighted node aggregation, which not only effectively reduces the graph size, but also preserves local neighbor correlation in varying subgraph scales. Finally, a graph convolution residual network is designed for multiscale hierarchical features extraction, which are further integrated into the final discriminative features for HSI classification via a diffusion operation. Moreover, a mini-batch branch is adopted to the large-scale superpixel branch of MSGCRN to further reduce computational cost. Extensive experiments on three public HSI datasets demonstrate the advantages of our MSGCRN model compared to several cutting-edge approaches.

© 2024 Society of Photo-Optical Instrumentation Engineers (SPIE)
Ao Li, Yuegong Sun, Cong Feng, Yuan Cheng, and Liang Xi "Multiscale graph convolution residual network for hyperspectral image classification," Journal of Applied Remote Sensing 18(1), 014504 (17 January 2024). https://doi.org/10.1117/1.JRS.18.014504
Received: 10 May 2023; Accepted: 27 December 2023; Published: 17 January 2024
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Cited by 2 scholarly publications.
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KEYWORDS
Convolution

Feature extraction

Hyperspectral imaging

Image segmentation

Education and training

Matrices

Data modeling

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