Open Access Paper
12 November 2024 Hyperspectral image classification based on coupled dual-channel generative adversarial network
Jiaji Shi, Wen Yi, Yuan Liu, Xiaochen Lu
Author Affiliations +
Proceedings Volume 13395, International Conference on Optics, Electronics, and Communication Engineering (OECE 2024) ; 1339506 (2024) https://doi.org/10.1117/12.3049212
Event: International Conference on Optics, Electronics, and Communication Engineering, 2024, Wuhan, China
Abstract
The aim of hyperspectral image (HSI) classification is to define categories for the different labels that are assigned to each pixel vector. Generative adversarial network (GAN) can mitigate the limited training sample dilemma to some extent, but there are still two critical issues, namely balance collapse and insufficient sample diversity. In this article, we propose a Coupled Dual-Channel Generative Adversarial Network for HSI classification. It mainly consists of a Coupled Generative Network (CGN) and a Dual-Channel Discriminative Network (DDN). CGN achieves the reconstruction of HSI samples through cascaded convolutional layers, in which the label information of the samples is used to avoid the balance collapse, while DDN extracts spatial attention weights and spectral attention weights of the input true/false samples respectively, and performs feature mining in both spatial and spectral dimensions in a dual-channel style. In order to reinforce the detailed features of input samples in both spatial and spectral dimensions, we design a new Cascaded Spatial-Spectral Attention Block (CSSAB). Finally, feature maps at different scales are fused for final sample discrimination and classification, which can mitigate the effects of insufficient sample diversity. Experimental results on two HSI data sets demonstrate that the proposed CDGAN effectively improves the classification performance compared to some state-ofthe-art GAN-based methods
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Jiaji Shi, Wen Yi, Yuan Liu, and Xiaochen Lu "Hyperspectral image classification based on coupled dual-channel generative adversarial network", Proc. SPIE 13395, International Conference on Optics, Electronics, and Communication Engineering (OECE 2024) , 1339506 (12 November 2024); https://doi.org/10.1117/12.3049212
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KEYWORDS
Hyperspectral imaging

Data modeling

Gallium nitride

Feature extraction

Image classification

Matrices

Convolution

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