多传感器融合的矿山特殊地形测量技术研究

    Special mine topographic survey technology combining drones and artificial intelligence

    • 摘要: 在矿山特殊地形测量中,高程信息对准确描述地形极为关键,与矿山坡度、谷深等信息紧密相关。传统依赖单一传感器构建的三维模型,仅能呈现地形部分特征,难以准确获取陡峭边坡、山谷等特殊地形区域的高程信息,致使模型在这些区域出现信息缺失或错误,测量结果误差较大。为此,提出一种多传感器融合的矿山特殊地形测量技术。以无人机为载体搭载多传感器获取矿山地表影像,借助地理信息系统规划航线、设置参数,利用倾斜摄影从不同角度采集影像,同时机载激光雷达获取点云数据,得到矿山特殊地形测量数据。基于人工智能算法进行特殊地形识别,采用Adaboost算法从影像和点云数据中提取关键信息,识别特殊地形,为三维建模提供基础。利用Delaunay三角化和纹理映射方法进行矿山特殊地形三维建模。通过GNSS/IMU融合的坐标转换技术获取精确高程数据,完善三维模型信息,最终构建兼具精确地形结构与真实表面特征的矿山特殊地形三维模型。结果表明:所研究方法的误差波动曲线整体接近基准线(0值),波动幅度小且稳定,测量精度较高、性能稳定,能为矿山规划、开采及安全管理提供有力数据支撑。

       

      Abstract: In the measurement of special terrain in mines, elevation information is crucial for accurately describing the terrain and is closely related to information such as mine slope and valley depth. Traditional 3D models relying on a single sensor can only present partial terrain features, making it difficult to accurately obtain elevation information of special terrain areas such as steep slopes and valleys, resulting in missing or incorrect information and significant measurement errors in these areas. Therefore, this study proposes a multi-sensor fusion technology for special terrain measurement in mines. Using unmanned aerial vehicles as carriers to carry multiple sensors to obtain surface images of mines, planning routes and setting parameters with the help of geographic information systems, using oblique photography to collect images from different angles, and obtaining point cloud data with airborne LiDAR to obtain special terrain measurement data of mines. Based on artificial intelligence algorithms for special terrain recognition, Adaboost algorithm is used to extract key information from images and point cloud data, identify special terrain, and provide a foundation for 3D modeling. Using Delaunay triangulation and texture mapping methods for 3D modeling of special terrain in mines. By using GNSS/IMU fusion coordinate transformation technology to obtain accurate elevation data, improve 3D model information, and ultimately construct a special terrain 3D model of the mine that combines precise terrain structure and real surface features. The results show that the error fluctuation curve of the studied method is generally close to the baseline (0 value), with small and stable fluctuation amplitude, high measurement accuracy, and stable performance, which can provide strong data support for mine planning, mining, and safety management.

       

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