复杂采空区激光多点探测及点云拼接与精简

Point cloud merging and compression of complicated goaf using multi-point laser-scan

  • 摘要: 针对复杂采空区激光探测中存在探测“盲区”和点云数据分布不均的问题,研究激光多点扫描和点云数据拼接与精简方法.通过多点探测避免了单次探测“盲区”,加密了数据稀疏区.提出了基于公共坐标和最小二乘法的靶标矩阵转换方法,实现了多点探测点云的拼接.统计了点云密集区的分布规律;对密集散乱点云,提出了沿y轴方向分层剖分,层内数据以xz坐标极值分区,区内每点以x值排序后依步长筛选的精简算法.大型贯通采空区验证表明:基于最小二乘法的拼接算法最优,误差范围在0.1 mm左右;数据精简率为15%-25%,确保了边界三维信息的完整性.

     

    Abstract: In view of the problems of ‘blind spots’ in complicated goaf detecting by using laser scanning and point cloud density distribution inhomogeneity, this article introduced multi-point laser scan and point cloud merging and compression. Multi-point scan in complicated goaf avoided ‘blind spots’ and densified sparse point cloud regions. The merging algorithm of point cloud data was put forward based on a common coordinate system and the least-squares principle to solve the target transformation matrix. After the distribution rule of point cloud concentration areas was analyzed, the scattered point cloud compression algorithm was proposed, in which the point cloud was divided into portions along the y direction firstly, then intralayer data were divided by the extreme values of x and z, and each point was sorted on the x value and screened on step k. Error analysis of an instance of large versed goaf shows that the merging algorithm based on the least-squares principle will achieve high precision with an error range of about 0.1 mm. The compression algorithm can achieve a compression proportion of 15% to 25% and ensure the integrity of 3D boundary information at the same time.

     

/

返回文章
返回