高光谱成像
计算机科学
公制(单位)
人工智能
对偶(语法数字)
计算机视觉
弹丸
领域(数学分析)
高斯分布
模式识别(心理学)
遥感
数学
地质学
物理
文学类
数学分析
艺术
量子力学
经济
有机化学
化学
运营管理
作者
Kaiyuan Shi,Xiaohua Zhang,Hongyun Meng,Chenjing Jia,Licheng Jiao
标识
DOI:10.1109/tgrs.2025.3605262
摘要
Metric-based few-shot learning methods have shown great potential in cross-domain hyperspectral image (HSI) classification. However, existing approaches face three key challenges: First, hyperspectral images exhibit complex spatial-spectral structures, and cross-domain distribution shifts further exacerbate feature discrepancies among same-class samples, increasing the difficulty of extracting class-consistent features. Second, in cross-domain few-shot scenarios, although some methods incorporate pseudo-label estimation to achieve class-level alignment, their effectiveness is limited by the scarcity of labeled samples in the target domain and the uncertainty of pseudo-labels, and existing domain-adversarial strategies still primarily focus on global distribution alignment, making it difficult to effectively model class-level shared features across domains. Third, intra-class feature modeling typically relies on a single class prototype, which fails to capture the complex and long-tailed distribution of intra-class features in few-shot learning scenarios. To address these challenges, a multi-Gaussian prototype metric with dual optimization (MGPDO) is proposed for cross-domain few-shot hyperspectral image classification. Specifically, for consistent feature extraction from samples with complex structures, a multi-scale feature extractor is designed to obtain features at multiple scales via parallel convolutions and pyramid pooling structures. For class-level alignment, the prototype-based cyclic domain triplet loss is proposed, integrating domain adversarial learning with cross-domain prototype contrast. The module iteratively optimizes prototype pairs to increase similarity between positive pairs and reduce correlation between negative pairs, promoting class-level alignment and shared features extraction across domains. Furthermore, for intra-class feature modeling, a multi-Gaussian prototype metric is introduced, which assigns multiple Gaussian prototypes to each class to construct a one-to-many mapping, effectively modeling complex long-tailed feature distribution and improving classification performance. Experimental results on three standard hyperspectral datasets validate the effectiveness of the proposed method, offering a novel perspective on deep learning-based cross-domain few-shot HSI classification.
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