欢迎访问《金属矿山》杂志官方网站,今天是 分享到:
×

扫码分享

金属矿山 ›› 2026, Vol. 55 ›› Issue (4): 272-278.

• 地质与测量 • 上一篇    

融合无人机倾斜摄影测量技术与K-均值聚类的开采沉陷区域识别#br#

冯 超1 张 高1 崔国庆2 赵太飞3   

  1. 1. 陕西能源职业技术学院建筑测绘学院,陕西 咸阳 712000;2. 国家测绘地理信息局第一地形测量队,陕西 西安 710054;
    3. 西安理工大学自动化与信息工程学院,陕西 西安 710048
  • 出版日期:2026-04-15 发布日期:2026-05-11
  • 通讯作者: 张 高(1989—),男,讲师,硕士。
  • 作者简介:冯 超(1986—),男,副教授,硕士。

Identification of Mining Subsidence Areas Using Drone Oblique Photogrammetry Technology Combined with K-Means Clustering#br#

FENG Chao1 ZHANG Gao1 CUI Guoqing2 ZHAO Taifei3   

  1. 1. School of Architecture & Surveying and Mapping Engineering,Shaanxi Energy Institute,Xianyang 712000,China;
    2. The First Topographic Surveying Brigade of Ministry of Natural Resource of PRC,Xi′an 710054,China;
    3. Institute of Automation and Information Engineering,Xi′an University of Technology,Xi′an 710048,China
  • Online:2026-04-15 Published:2026-05-11
  • Supported by:
    陕西省教育厅自然科学一般项目(编号:22JK0326)。

摘要: 随着矿山开采活动的不断深入,开采沉陷问题日益凸显,严重威胁着矿区环境安全与社会稳定。针对
传统的沉陷监测方法存在成本高、效率低、数据更新滞后的不足,提出了一种融合无人机倾斜摄影测量技术与K-均值
聚类算法的矿山沉陷区域识别方法。首先,利用无人机搭载倾斜摄影设备,对矿区进行多角度、多时相的高分辨率影
像采集;然后,通过倾斜摄影测量技术构建矿区三维点云模型,实现沉陷区域的精确定位。在此基础上,应用K-均值
聚类算法对点云数据进行分类处理,自动识别出沉陷区域。以西山煤电官地煤矿采空区为例进行试验,并与三维激
光扫描技术、支持向量机(Support Vector Machine,SVM)、随机森林(Random Forest,RF)、DBSCAN 聚类以及卷积神经网
络(Convolutional Neural Network,CNN)等算法进行对比。结果表明:所提方法沉陷区识别准确率达到92. 5%,在识别
准确率以及算法运行效率等方面显著优于其他算法,反映出该方法相对于传统算法在效率与精度上均有显著提升,
为开采沉陷监测提供了技术支撑。

关键词: 开采沉陷 , 无人机倾斜摄影测量 , K-均值聚类 , 沉陷区域识别 , 三维激光扫描 , 支持向量机

Abstract: With the continuous deepening of mining activities,the problem of mining subsidence has become increasingly
prominent,seriously threatening environmental safety and social stability in mining area. In response to the shortcomings of traditional
subsidence monitoring methods,such as high cost,low efficiency,and delayed data updates,a method for identifying
subsidence areas in mines by integrating unmanned aerial vehicle (UAV) oblique photogrammetry technology and the K-means
clustering algorithm is proposed. Firstly,a UAV equipped with oblique photogrammetry equipment is used to collect high-resolution
images of the mining area from multiple angles and at multiple times. Then,a three-dimensional point cloud model of the
mining area is constructed through oblique photogrammetry technology to accurately locate the subsidence areas. On this basis,
the K-means clustering algorithm is applied to classify the point cloud data and automatically identify the subsidence areas.
Tests were conducted using the goaf area of the Guandi Coal Mine of Xishan Coal and Electricity as an example and compared
with 3D laser scanning technique,support vector machine (SVM),random forest (RF),DBSCAN clustering and convolutional
neural network. The results show that the accuracy rate of sinkhole identification by the proposed method reached 92. 5%. It
significantly outperformed the other algorithms in terms of identification accuracy and algorithm running efficiency,indicating
that this method has achieved significant improvements in both efficiency and accuracy compared to traditional algorithms,providing
technical support for mining sinkhole monitoring.

Key words: mining subsidence,unmanned aerial vehicle oblique photogrammetry,K-means clustering,identificaiton of , subsidence area,3D laser scanning technique,support vector machine

中图分类号: