测绘通报 ›› 2026, Vol. 0 ›› Issue (4): 127-133.doi: 10.13474/j.cnki.11-2246.2026.0418

• 技术交流 • 上一篇    下一篇

多层级RANSAC堆石坝坝面平整度检测

董禧龙1,2, 刘旭1,2, 詹虎跃3,4, 席隆海3,4, 杨赟明3,4, 陈亚军5,6   

  1. 1. 昆明理工大学国土资源工程学院, 云南 昆明 650000;
    2. 云南省自然资源智能监测与时空大数据治理重点实验室, 云南 昆明 650000;
    3. 华能澜沧江水电股份有限公司, 云南 昆明 650000;
    4. 西藏自治区澜沧江清洁能源安全绿色智能建设技术创新中心, 西藏 拉萨 850000;
    5. 中国电建集团昆明勘测设计研究院有限公司, 云南 昆明 650000;
    6. 云南省水利水电智能建造工程研究中心, 云南 昆明 650000
  • 收稿日期:2025-09-08 发布日期:2026-05-12
  • 通讯作者: 刘旭。E-mail:xuliu@kust.edu.cn
  • 作者简介:董禧龙(2000—),男,硕士,主要研究方向为工程测量与点云数据处理应用。E-mail:youbaopa@163.com
  • 基金资助:
    国家自然科学基金(4250010078);云南省院士专家工作站项目(202305AF150207);云南省工程研究中心创新能力建设提升专项(202310);中国华能集团有限公司科技项目(HNKJ23-H24)

Multi-layer RANSAC for surface flatness detection of rockfill dams

DONG Xilong1,2, LIU Xu1,2, ZHAN Huyue3,4, XI Longhai3,4, YANG Yunming3,4, CHEN Yajun5,6   

  1. 1. Faculty of Land Resources Engineering, Kunming University of Science and Technology, Kunming 650000, China;
    2. Yunnan Key Laboratory of Intelligent Monitoring and Spatiotemporal Big Data Governance of Natural Resources, Kunming 650000, China;
    3. Huaneng Lancang River Hydropower Co., Ltd., Kunming 650000, China;
    4. Lancang River Clean Energy Security Green Intelligent Construction Technology Innovation Center of Xizang Autonomous Region, Lhasa 850000, China;
    5. China Power Construction Group Kunming Survey Design & Research Institute Co., Ltd., Kunming 650000, China;
    6. Yunnan Engineering Research Center of Water Conservancy and Hydropower Intelligent Construction, Kunming 650000, China
  • Received:2025-09-08 Published:2026-05-12

摘要: 大型堆石坝的平整度检测对结构安全至关重要。传统平整度检测方法效率低、精度不足。为此,本文针对多层级糯扎渡大型堆石坝,提出了多层级随机采样一致性(ML-RANSAC)检测方法。该方法包括3个关键步骤:①点云配准与近似体素滤波实现数据降采样;②基于主成分的自适应聚类(PCAAC)降噪方法将点云降维至二维滤除噪声,同时结合高度分层与角度聚类分割坝面主体点云;③通过法向量约束和距离阈值优化ML-RANSAC平面拟合,实现多层级坝面的精准分割与平整度分析。试验表明,与传统RANSAC算法相比,本文方法平面拟合均方误差(MSE)降低43.4%,检测效率提升55.2%,并有效识别出坝面局部偏差,生成可视化热力偏差图。分层采样与局部模型融合显著提升了大规模点云处理效率与复杂几何结构的检测精度,为堆石坝质量评估提供了高精度、低风险的自动化解决方案。

关键词: 多层级RANSAC, 三维激光扫描, PCAAC点云降噪, 堆石坝平整度检测, 点云处理

Abstract: Flatness detection of large rockfill dams is critical to structural safety.Conventional flatness detection methods suffer from low efficiency and insufficient accuracy.To address these limitations,a multi-layer random sample consensus-based detection method is proposed for the multi-level Nuozhadu large rockfill dam.The proposed method consists of three key steps: ①point cloud registration and approximate voxel filtering for data downsampling; ②a PCA-based adaptive clustering denoising approach that reduces the point cloud to two dimensions to remove noise,combined with height stratification and angular clustering to segment the main dam surface point cloud; ③optimized ML-RANSAC plane fitting with normal vector constraints and distance thresholds to achieve accurate segmentation and flatness analysis of multi-layer dam surfaces.Experimental results show that,compared with the traditional RANSAC algorithm,the proposed method reduces the plane-fitting mean square error by 43.4%and improves detection efficiency by 55.2%.It also effectively identifies local surface deviations and generates visualized deviation heat maps.By integrating stratified sampling and local model fusion,the method significantly enhances large-scale point cloud processing efficiency and detection accuracy for complex geometries,providing a high-precision,low-risk automated solution for rockfill dam quality assessment.

Key words: multi-layer RANSAC, 3D laser scanning, PCAAC point cloud denoising, rockfill dam flatness detection, point cloud processing

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