测绘通报 ›› 2026, Vol. 0 ›› Issue (6): 29-34.doi: 10.13474/j.cnki.11-2246.2026.0605

• 学术研究 • 上一篇    

基于多尺度特征融合YOLO11s模型的遥感影像滑坡识别

汪剑平, 郑印强, 束蝉方   

  1. 南京工业大学测绘科学与技术学院, 江苏 南京 211816
  • 收稿日期:2025-10-09 发布日期:2026-07-09
  • 通讯作者: 束蝉方。E-mail:shuchanfang@njtech.edu.cn
  • 作者简介:汪剑平(1997—),男,硕士,主要从事遥感影像数据处理研究。E-mail:3493168807@qq.com
  • 基金资助:
    江苏省测绘地理信息科研项目(JSCHKY201504)

Landslide recognition in remote sensing images based on multi-scale feature fusion YOLO11s model

WANG Jianping, ZHENG Yinqiang, SHU Chanfang   

  1. School of Geomatics Science and Technology, Nanjing Tech University, Nanjing 211816, China
  • Received:2025-10-09 Published:2026-07-09

摘要: [目的] 针对遥感影像滑坡识别中,多尺度目标检测精度有限、小目标识别效果不佳等问题,本文构建了一种兼顾滑坡检测精确率、检测效率和多尺度特征目标检测性能的滑坡检测算法YOLO11s-RDS。[方法]算法通过在YOLO11s主干网络中融入结构重参数化模块RepVGG、在颈部网络中引入动态上采样器DySample、在颈部网络与头部网络之间插入多尺度序列特征融合模块,提升模型对复杂滑坡特征和小尺度滑坡目标的检测能力。[结果]遥感滑坡数据集试验结果表明,改进模型YOLO11s-RDS的精确率、召回率、mAP0.5、mAP0.5:0.95F1值较原始模型分别提升了1.3、8.8、5.5、5.5和5.7个百分点。[结论]与YOLO系列其他模型相比,改进模型YOLO11s-RDS在遥感影像滑坡识别中表现出良好的综合性能。

关键词: YOLO11s模型, 滑坡检测, RepVGG, 动态上采样器, 多尺度特征融合

Abstract: [Purposes]Landslide recognition in remote sensing images is crucial in geological disaster detection and emergency response.However,existing methods often face challenges such as limited detection accuracy and poor recognition of small-scale landslide targets.Based on the YOLO11s model,this paper proposes an improved landslide detection algorithm named YOLO11s-RDS,which balances detection accuracy,efficiency,and multi-scale feature extraction capabilities.[Methods]The algorithm enhances the model's detection ability for complex landslide features and small-scale landslide targets by integrating the structural reparameterization module RepVGG into the YOLO11s backbone network,introducing the dynamic upsampler DySample into the neck network,and inserting a multi-scale sequence feature fusion module between the neck network and the head network.[Findings]The experimental results on the remote sensing landslide dataset show that the improved YOLO11s-RDS model achieves improvements of 1.3,8.8,5.5,5.5,and 5.7 percentage points in precision,recall,mAP0.5,mAP0.5:0.95,and F1-score,respectively,compared to the original model.[Condusions]Compared to other models in the YOLO series,the improved model YOLO11s-RDS demonstrates strong overall performance in landslide identification in remote sensing imagery.

Key words: YOLO11s model, landslide detection, RepVGG, dynamic upsampler, multi-scale feature fusion

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