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Papers/Hyperspectral Image Classification via Transformer-based S...

Hyperspectral Image Classification via Transformer-based Spectral-Spatial Attention Decoupling and Adaptive Gating

Guandong Li, Mengxia Ye

2025-06-10Hyperspectral Image ClassificationImage ClassificationClassification
PaperPDFCode(official)

Abstract

Deep neural networks face several challenges in hyperspectral image classification, including high-dimensional data, sparse distribution of ground objects, and spectral redundancy, which often lead to classification overfitting and limited generalization capability. To more effectively extract and fuse spatial context with fine spectral information in hyperspectral image (HSI) classification, this paper proposes a novel network architecture called STNet. The core advantage of STNet stems from the dual innovative design of its Spatial-Spectral Transformer module: first, the fundamental explicit decoupling of spatial and spectral attention ensures targeted capture of key information in HSI; second, two functionally distinct gating mechanisms perform intelligent regulation at both the fusion level of attention flows (adaptive attention fusion gating) and the internal level of feature transformation (GFFN). This characteristic demonstrates superior feature extraction and fusion capabilities compared to traditional convolutional neural networks, while reducing overfitting risks in small-sample and high-noise scenarios. STNet enhances model representation capability without increasing network depth or width. The proposed method demonstrates superior performance on IN, UP, and KSC datasets, outperforming mainstream hyperspectral image classification approaches.

Results

TaskDatasetMetricValueModel
HyperspectralPavia UniversityOverall Accuracy100STNet
HyperspectralIndian PinesOverall Accuracy99.77STNet
Image ClassificationPavia UniversityOverall Accuracy100STNet
Image ClassificationIndian PinesOverall Accuracy99.77STNet
Hyperspectral Image SegmentationPavia UniversityOverall Accuracy100STNet
Hyperspectral Image SegmentationIndian PinesOverall Accuracy99.77STNet

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