高光谱成像
计算机科学
人工智能
扩散
弹丸
蒸馏
遥感
图像(数学)
领域(数学分析)
上下文图像分类
模式识别(心理学)
计算机视觉
材料科学
地质学
数学
化学
色谱法
物理
数学分析
冶金
热力学
作者
Chen Ding,Sirui Zheng,Mengmeng Zheng,Yizhou Dong,Wenqiang Hua,Wei Wei,Lei Zhang,Yanning Zhang
标识
DOI:10.1109/tgrs.2025.3584804
摘要
Cross-domain few-shot learning (FSL) has demonstrated remarkable new classes recognition capabilities in hyperspectral image classification tasks. However, existing domain adaptation methods face two critical challenges in the cross-domain feature alignment process: first, the domain shift leads to misaligned feature transfer and diminished classification accuracy; second, the intra-class feature dispersion and inter-class boundary blurring in few-shot tasks result in degraded classification performance for novel classes. Moreover, the impact of redundant and noisy data on model discriminability is rarely considered in existing approaches. To solve these issues, this article proposes a cross-domain FSL hyperspectral image classification method based on diffusion-augmented prototype knowledge distillation (DAPKD-CFSL). Firstly, we introduce a diffusion-augmented unsupervised domain adaptation pre-training (DA-PT) framework to address the domain shift by performing a domain-adversarial denoising and reconstruction task using visible source data and masked target data. Second, our dual-branch spatial-spectral attention (DB-SSA) captures global and local spectral-spatial dependencies to enhance feature representation. Then, the proposed global-local prototype knowledge distillation (GL-PKD) performs global prototype alignment while conducting local contrastive learning, addressing feature dispersion and boundary ambiguity. Finally, a dynamic learning strategy prioritizes feature alignment early and gradually strengthens classification supervision through adaptive loss weights, and incorporates an SNR-enhanced loss to effectively mitigate noise interference. The experimental results on three HSI datasets demonstrate the superiority and effectiveness of the proposed DAPKD-CFSL.
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