中国空间科学技术

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全局建模与多维特征对齐的跨域变化检测

王国芳1,严逸骏1,周仿荣1,*,汪韬阳2,黎旨霖2   

  1. 1.云南电网有限责任公司电力科学研究院,昆明650217
    2.武汉大学遥感信息工程学院,武汉430072
  • 收稿日期:2025-08-30 修回日期:2025-09-19 录用日期:2025-09-28 发布日期:2026-04-09

Global modeling and multi-dimensional feature alignment for cross-domain change detection

WANG Guofang1,YAN Yijun1,ZHOU Fangrong1,*,WANG Taoyang2,LI Zhilin2   

  1. 1.Electric Power Research Institute,Yunnan Power Grid Company Ltd.,Kunming 650217, China
    2.School of Remote Sensing and Information Engineering,Wuhan University,Wuhan 430072,China
  • Received:2025-08-30 Revision received:2025-09-19 Accepted:2025-09-28 Online:2026-04-09

摘要: 对卫星遥感影像变化检测中,因区域、传感器差异导致的模型跨域泛化能力严重下降的问题进行了研究,旨在提升无监督场景下变化检测模型对未知目标域的适应能力。 提出了一种融合Swin Transformer与对抗性特征对齐的跨域变化检测网络Swin-CDCD。首先,构建了以孪生Swin Transformer为核心的特征提取主干网络,利用其层次化窗口注意力机制强大的长程依赖建模能力,显著增强了对遥感影像双时相变化特征的表示能力。进而,设计了基于自注意力的判别器,通过全局依赖关系建模精细化捕捉与对齐域间特征分布差异。最后,提出了双空间特征对齐(DFA)策略,创新性地对前后时相的整体特征及其差分特征进行联合对抗学习,有效提升了模型对真实变化区域的敏感性,并减少了由域偏移引起的虚检与漏检。在LEVIR-CD与WHU-CD数据集上进行的双向跨域实验(L2W与W2L)表明,所提方法显著优于现有的多种无监督域适应基线模型。具体而言,在L2W(LEVIR-CD→WHU-CD)和W2L(WHU-CD→LEVIR-CD)任务中,F1分数分别达到了82.71%和79.04%,交并比(IoU)分别达到了70.52%和65.35%,验证了在复杂跨域场景下优异的检测,精度与泛化能力。

关键词: 卫星遥感, 变化检测, 无监督域适应, Transformer, 对抗训练

Abstract: The significant performance degradation of change detection models, caused by distribution shifts due to different regions and sensors in satellite remote sensing images, was investigated. This study aims to enhance the model's adaptability to unlabeled target domains in unsupervised scenarios.A novel cross-domain change detection network, Swin-CDCD, which integrates Swin Transformer and adversarial feature alignment, was proposed. First, a siamese Swin Transformer backbone was constructed as the feature extraction network, leveraging its hierarchical window attention mechanism for powerful long-range dependency modeling to significantly improve the representation of change features in bi-temporal remote sensing images. Furthermore, a self-attention-based discriminator was designed to meticulously capture and align inter-domain feature distribution discrepancies through global dependency modeling. Lastly, a dual-space feature alignment (DFA) strategy was introduced, which innovatively conducted joint adversarial learning on both the holistic temporal features and the difference features, effectively enhancing the model's sensitivity to genuine changes and reducing false alarms and missed detections caused by domain shift. Extensive bidirectional cross-domain experiments on the LEVIR-CD and WHU-CD datasets demonstrated that the proposed method significantly outperformed various existing unsupervised domain adaptation baselines. Specifically, it achieved F1 scores of 82.71% and 79.04%, and Intersection over Union (IoU) values of 70.52% and 65.35% on the L2W (LEVIR-CD→WHU-CD) and W2L (WHU-CD→LEVIR-CD) tasks, respectively, confirming its superior detection accuracy and generalization capability in complex cross-domain scenarios.

Key words: remote sensing, change detection, unsupervised domain adaptation, Transformer, adversarial training