A review of hyperspectral image classification based on graph neural networks

IF 10.7 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Xiaofeng Zhao, Junyi Ma, Lei Wang, Zhili Zhang, Yao Ding, Xiongwu Xiao
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引用次数: 0

Abstract

Hyperspectral images provide rich spectral-spatial information but pose significant classification challenges due to high dimensionality, noise, mixed pixels, and limited labeled samples. Graph Neural Networks (GNNs) have emerged as a promising solution, offering a semi-supervised framework that can capture complex spatial-spectral relationships inherent in non-Euclidean hyperspectral image data. However, existing reviews often concentrate on specific aspects, thus limiting a comprehensive understanding of GNN-based hyperspectral image classification. This review systematically outlines the fundamental concepts of hyperspectral image classification and GNNs, and summarizes leading approaches from both traditional machine learning and deep learning. Then, it categorizes GNN-based methods into four paradigms: graph recurrent neural networks, graph convolutional networks, graph autoencoders, and hybrid graph neural networks, discussing their theoretical underpinnings, architectures, and representative applications. Finally, five key directions are further highlighted: adaptive graph construction, dynamic graph processing, deeper architectures, self-supervised strategies, and robustness enhancement. These insights aim to facilitate continued innovation in GNN-based hyperspectral imaging, guiding researchers toward more efficient and accurate classification frameworks.

高光谱图像提供了丰富的光谱空间信息,但由于维度高、噪声大、像素混杂和标记样本有限,给分类带来了巨大挑战。图神经网络(GNN)是一种很有前途的解决方案,它提供了一种半监督框架,可以捕捉非欧几里得高光谱图像数据中固有的复杂空间-光谱关系。然而,现有的综述往往集中在特定方面,从而限制了对基于 GNN 的高光谱图像分类的全面了解。本综述系统地概述了高光谱图像分类和 GNN 的基本概念,并总结了传统机器学习和深度学习的主要方法。然后,它将基于 GNN 的方法分为四种范式:图循环神经网络、图卷积网络、图自动编码器和混合图神经网络,并讨论了它们的理论基础、架构和代表性应用。最后,进一步强调了五个关键方向:自适应图构建、动态图处理、更深入的架构、自监督策略和鲁棒性增强。这些见解旨在促进基于 GNN 的高光谱成像技术的持续创新,引导研究人员建立更高效、更准确的分类框架。
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来源期刊
Artificial Intelligence Review
Artificial Intelligence Review 工程技术-计算机:人工智能
CiteScore
22.00
自引率
3.30%
发文量
194
审稿时长
5.3 months
期刊介绍: Artificial Intelligence Review, a fully open access journal, publishes cutting-edge research in artificial intelligence and cognitive science. It features critical evaluations of applications, techniques, and algorithms, providing a platform for both researchers and application developers. The journal includes refereed survey and tutorial articles, along with reviews and commentary on significant developments in the field.
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