Abstract
LiDAR (laser imaging detection and ranging) has been developed to measure the distance of the mesh of points on an object with a high level of accuracy. It provides high-resolution point cloud data as a result of distance measurement. Detailed 3D shapes of objects can be estimated from point cloud data. LiDAR has been used to identify discontinuities in a rock mass of a tunnel gallery wall. To identify discontinuities, it is necessary to approximate the rock mass surface with small planes. Normal vectors of the planes are important to identify discontinuities. We developed an algorithm for estimation of planes based on multi-dimensional particle swarm optimization (MD PSO) from point cloud data. Point cloud data were segmented into bounding boxes and grouped into clusters by MD PSO. Planes were estimated using the least squares method for point cloud data in the respective clusters. The newly developed algorithm based on MD PSO was evaluated using point cloud data obtained from a gallery wall. Evaluation was carried out in comparison with the previous developed variable-box segmentation (VBS) algorithm. The MD PSO-based algorithm showed a 7% higher accuracy than that of the VBS algorithm.
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