测绘通报 ›› 2026, Vol. 0 ›› Issue (5): 17-21.doi: 10.13474/j.cnki.11-2246.2026.0504

• 第二十八届中国科协年会学术论文 • 上一篇    

面向灾前光学与灾后SAR的配准不确定性感知实例级建筑损毁评估

李嘉俊, 方易琳, 段汶希   

  1. 北京邮电大学国际学院, 北京 100876
  • 收稿日期:2026-04-16 发布日期:2026-06-09
  • 作者简介:李嘉俊(2004—),男,主要研究方向为计算机视觉。E-mail:lijiajun@bupt.edu.cn

Registration-uncertainty-aware instance-level building damage assessment from pre-disaster optical and post-disaster SAR imagery

LI Jiajun, FANG Yilin, DUAN Wenxi   

  1. International School, Beijing University of Posts and Telecommunications, Beijing 100876, China
  • Received:2026-04-16 Published:2026-06-09

摘要: [目的] 针对灾后高质量光学影像难以及时获取,以及灾前光学与灾后 SAR 之间存在显著模态差异和配准不确定性的问题,本文提出了一种面向实例级建筑损毁评估的稳健建模方法,以提高复杂灾害场景下建筑级损毁识别的可靠性。[方法] 以灾前光学影像构建建筑实例先验,以灾后 SAR 影像提取损毁证据场,并引入候选对齐建模与概率式证据聚合机制,实现配准不确定性条件下的建筑级证据归因,结合损毁分级判别与不确定性校准完成实例级建筑损毁评估,并在 BRIGHT 数据集上开展主试验、消融试验、配准扰动稳健性试验与跨事件泛化试验。[结果] 结果表明,本文方法在实例级分割精度、建筑级损毁判别能力和预测可靠性方面均取得较好表现;其中 mAP 达 0.66,F1达 0.65,ECE 为 0.02。与去除对齐建模的方案相比,完整模型 mAP 提升约0.01,F1提升约0.05。[结论] 本文将该任务重述为配准不确定性下的建筑级证据归因问题,可为灾前光学与灾后 SAR 条件下的实例级建筑损毁评估提供一种稳健且可解释的技术路径。

关键词: 建筑损毁评估, 实例级分析, 光学与 SAR, 配准不确定性, 证据归因

Abstract: [Purposes]To address the limited availability of high-quality post-disaster optical imagery,as well as the significant modality gap and registration uncertainty between pre-disaster optical imagery and post-disaster SAR imagery,this study proposes a robust modeling method for instance-level building damage assessment to improve the reliability of building-level damage recognition in complex disaster scenarios.[Methods]Building instance priors are first constructed from pre-disaster optical imagery,while a damage evidence field is extracted from post-disaster SAR imagery.On this basis,a candidate alignment modeling and probabilistic evidence aggregation mechanism is introduced to achieve building-level evidence attribution under registration uncertainty.Combined with damage grading and uncertainty calibration,the proposed framework performs instance-level building damage assessment in a unified manner.Main experiments,ablation studies,robustness tests under registration perturbations,and cross-event generalization experiments are conducted on the BRIGHT dataset.[Findings]The results show that the proposed method achieves strong performance in instance-level segmentation accuracy,building-level damage discrimination,and prediction reliability.Specifically,it reaches an mAP of 0.66,a F1 of 0.65,and an ECE of 0.02.Compared with the variant without alignment modeling,the full model improves mAP by about 0.01 and F1 by about 0.05.[Conclusions]This study reformulates the task as a building-level evidence attribution problem under registration uncertainty,rather than a simple cross-modal feature fusion problem.The proposed framework provides a robust and interpretable technical solution for instance-level building damage assessment using pre-disaster optical and post-disaster SAR imagery.

Key words: building damage assessment, instance-level analysis, optical and SAR, registration uncertainty, evidence attribution

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