高光谱成像
计算机科学
人工智能
稳健性(进化)
模式识别(心理学)
冗余(工程)
特征提取
特征(语言学)
上下文图像分类
数据挖掘
限制
计算机视觉
图像融合
空间分析
面子(社会学概念)
数据冗余
特征学习
融合
光谱带
相互信息
作者
Zhenqiu Shu,Kexin Zeng,Yuyang Wang,Songze Tang,Zhengtao Yu,Liang Xiao
标识
DOI:10.1109/tnnls.2025.3630239
摘要
Transformer-based methods have recently shown remarkable success in hyperspectral image classification (HSIC). However, their applications, in practice, still face two significant challenges. First, although the multihead mechanism in self-attention improves model robustness during training, it may overlook the continuity of spectral bands. Second, existing methods often struggle to effectively balance global and local information during multiscale feature extraction, limiting further improvements in classification performance. To address these issues, we propose a novel spectral-guided multiscale feature-aware Transformer (SMFAT) framework for HSIC. Specifically, a global low-rank spectral learning (GLSL) module is introduced to project hyperspectral image patches into a low-rank subspace, reducing spectral redundancy and capturing global spectral correlations. Furthermore, we introduce the multiscale feature-aware self-attention (MFASA) mechanism, which dynamically integrates fine- and coarse-grained features to enhance multiscale feature modeling. Finally, a spectral-guided fusion (SGF) module leverages the global spectral information extracted by the GLSL module to guide MFASA in more effectively capturing interspectral correlations and spectral continuity. This approach facilitates a more effective integration of spectral and spatial features in HSIs. Experiments on three well-known HSI datasets verify that the proposed SMFAT method significantly outperforms several state-of-the-art approaches in real-world HSIC tasks. The source code for this work is available at https://github.com/stellaZ77/SMFAT.
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