高光谱成像
人工智能
计算机科学
一致性(知识库)
模式识别(心理学)
对偶(语法数字)
适应(眼睛)
域适应
图像(数学)
RGB颜色模型
上下文图像分类
航程(航空)
光谱带
全光谱成像
计算机视觉
遥感
领域(数学分析)
数据建模
构造(python库)
判别式
数据挖掘
可视化
特征提取
作者
B. J. Chen,Geng Zhang,Tieqiao Chen,Meng Wang,Jia Liu,Yihao Wang,Renhao Zhang,Siyuan Li,Bingliang Hu
标识
DOI:10.1109/tgrs.2025.3617218
摘要
Recently, few-shot learning-based methods have achieved impressive results in cross-domain hyperspectral classification. However, existing approaches often ignore differences in spectral information caused by varing spectral range across different datasets, and encounter limitations due to the constrained parameter size of the models. Furthermore, the substantial differences between RGB and hyperspectral images present significant challenges in applying foundation models (e.g., SAM, DINOv2) to the hyperspectral domain. This paper proposes a novel framework for cross-domain few-shot hyperspectral classification that leverages parameter-efficient fine-tuning, which we apply to DINOv2 to construct SpectralDINO. Different spectral ranges reflect different physical properties of the target. To enhance the consistency of the spectral features extracted by the model from different domains, we introduce a source domain spectral alignment (SDSA) strategy to align the spectral ranges and bands of the source domain data to the target domain. SpectralDINO employs the visual foundation model to enhance its ability to generalize cross-domain knowledge. Additionally, we propose a dual mixture-of-subspaces low-rank adaptation (Dual-MoS LoRA) method to address the structural limitation of the low-rank adaptation methods in distinguishing domain-specific features from multi-domain inputs. Only 1.14% of the 21.37M parameters need to be trained to perform fine-tuning. Extensive experimental results on three public datasets demonstrate the superiority of SpectralDINO.
科研通智能强力驱动
Strongly Powered by AbleSci AI