地下隧道多层次点云分类方法研究

Zhihua Xiao
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引用次数: 0

摘要

地下隧道工程是一项复杂的系统工程。在隧道施工测量中,隧道内地物的自动准确分类是至关重要的。针对这一问题,本文提出了一种多层地下隧道点云分类方法,该方法采用分层聚类结构对原始隧道点云进行处理。分步提取隧道内的隧道面、轨道、平台、管道四种具体地面目标。实验表明,本文提出的多级隧道点云分类方法能够准确提取这四种地物。各实验区投影平面平均精度不低于95.00%,点云分类平均精度不低于92.63%,能较好地满足地下隧道内部施工测量的需要。
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Research on multi-level point cloud classification method of underground tunnel
Underground tunnel engineering is complex systematic engineering. Classifying the ground objects inside the tunnel automatically and accurately is crucial in tunnel construction surveys. Aiming at this problem, this paper proposes a multi-layer underground tunnel point cloud classification method, which uses the hierarchical clustering structure to deal with the original tunnel point cloud. It extracts four specific ground objects: tunnel surface, track, platform, and pipeline inside the tunnel step by step. Experiments show that this paper’s multi-level tunnel point cloud classification method can accurately extract these four types of ground objects. The average accuracy of the projection plane in each experimental area is not less than 95.00%, and the average accuracy of point cloud classification is not less than 92.63%, which can better meet the needs of the underground tunnel internal construction survey.
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