测绘通报 ›› 2026, Vol. 0 ›› Issue (4): 81-89.doi: 10.13474/j.cnki.11-2246.2026.0412

• 学术研究 • 上一篇    下一篇

融合SBAS-InSAR和VRO_YOLO的活跃滑坡自动检测

朱馨月1,2, 纪元法1,3, 闫强4, 孙希延2,3, 白杨1,3, 赵松克2,3   

  1. 1. 桂林电子科技大学信息与通信学院, 广西 桂林 541004;
    2. 教育部时空信息与智能位置服务国际合作联合实验室, 广西 桂林 541004;
    3. 南宁桂电电子科技研究院有限公司, 广西 南宁 530031;
    4. 平陆运河集团有限公司, 广西 南宁 530201
  • 收稿日期:2025-09-04 发布日期:2026-05-12
  • 通讯作者: 纪元法。E-mail:2694620467@qq.com
  • 作者简介:朱馨月(2001—),女,硕士,主要研究方向为InSAR、遥感。E-mail:2046322910@qq.com
  • 基金资助:
    广西科技计划(桂科AA23062038);广西自然科学基金(2024GXNSFBA010265);桂林电子科技大学研究生教育创新项目(2025YCXS032);国家自然科学基金(U23A20280;62061010;62161007);广西高校中青年教师科研基础能力提升项目(2022KY0181);北斗位置服务及边海防安全应用协同创新中心资助;“认知无线电与信息处理”教育部重点实验室2022年主任基金

Automatic detection of active landslides based on SBAS-InSAR and VRO_YOLO

ZHU Xinyue1,2, JI Yuanfa1,3, YAN Qiang4, SUN Xiyan2,3, BAI Yang1,3, ZHAO Songke2,3   

  1. 1. Information and Communicaiton Schnool, Guilin University of Electronic Technology, Guilin 541004, China;
    2. International Joint Research Laboratory of Spatio-temporal Information and Intelligent Location Services, Ministry of Education, Guilin 541004, China;
    3. GUET-Nanning E-Tech Research Institute Co., Ltd., Nanning 530031, China;
    4. Pinglu Canal Group Co., Ltd., Nanning 530201, China
  • Received:2025-09-04 Published:2026-05-12

摘要: 为解决InSAR技术在滑坡检测中自动化识别精度不足、适配复杂地形能力弱,以及现有深度学习模型针对InSAR滑坡识别方法匮乏、对细微变形和小尺度滑坡识别有限的问题,本文提出了融合SBAS-InSAR与改进YOLOv8的活跃滑坡自动检测方法。首先通过 SBAS-InSAR处理多时相SAR影像,生成地表形变速率图。然后构建VRO_YOLO模型,以可变核卷积适配滑坡不规则形态,通过融合RepVGG、ShuffleNet与One-Shot Aggregation的通道混洗一次性聚合模块RVS-OSA,增强多尺度特征融合。最后以广西平陆运河为研究区,利用49景Sentinel-1 SAR影像构建数据集试验,并结合高分辨率遥感影像进行多维度验证。VRO_YOLO的检测精度为51.2%,召回率为55.2%,平均精度为46.8%,并通过对比、消融及泛化试验验证了其适用性与准确性。该方法为滑坡探测提供了有效方案,可提升灾害预警与风险防控能力。

关键词: 滑坡, InSAR, 形变, VRO_YOLO, 遥感

Abstract: To address the challenges of insufficient automatic recognition accuracy of InSAR technology and difficulty in adapting complex terrain landslide features in current landslide detection,as well as the lack of existing deep learning models for InSAR landslide recognition methods,and the limited ability of recognizing fine deformation and small-scale landslides,this paper proposes a method of automatic detection of active landslides by fusing SBAS-InSAR with the improvement of YOLOv8,in order to achieve the accurate identification of active landslides in large areas.The method first generates a surface deformation rate map by processing multi-temporal SAR images with SBAS-InSAR,and then constructs the improved VRO_YOLO model: We propose variable kernel convolution to adapt to the irregular morphology of landslides,and integrate RepVGG,ShuffleNet,and One-Shot Aggregation to construct the channel one-shot shuffle (RVS-OSA)module to enhance the multi-scale identification of active landslides.Taking the Pinglu Canal area in Guangxi as the study area,49-view Sentinel-1 SAR images are used to generate the rate map and construct the dataset to carry out the experiments.Finally,the multi-dimensional validation by combining high-resolution remote sensing,UAV tilt photography and field exploration further supports the accuracy of the method.The results show that the detection precision of VRO_YOLO reaches 51.2%,the recall rate reaches 55.2%,and the mean accuracy reaches 46.8%,and the further comparisons,ablations,and generalization experiments validate the applicability and accuracy of the model accuracy.In conclusion,the method provides a strong potential for landslide detection,contributing to disaster prevention and risk reduction.

Key words: landslide, InSAR, deformation, VRO_YOLO, remote sensing

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