Abstract

The degree of automation and efficiency are among the most important factors that influence the availability of Terrestrial light detection and ranging (LiDAR) Scanning (TLS) registration algorithms. This paper proposes an Ortho Projected Feature Images (OPFI) based 4 Degrees of Freedom (DOF) coarse registration method, which is fully automated and with high efficiency, for TLS point clouds acquired using leveled or inclination compensated LiDAR scanners. The proposed 4DOF registration algorithm decomposes the parameter estimation into two parts: (1) the parameter estimation of horizontal translation vector and azimuth angle; and (2) the parameter estimation of the vertical translation vector. The parameter estimation of the horizontal translation vector and the azimuth angle is achieved by ortho projecting the TLS point clouds into feature images and registering the ortho projected feature images by Scale Invariant Feature Transform (SIFT) key points and descriptors. The vertical translation vector is estimated using the height difference of source points and target points in the overlapping regions after horizontally aligned. Three real TLS datasets captured by the Riegl VZ-400 and the Trimble SX10 and one simulated dataset were used to validate the proposed method. The proposed method was compared with four state-of-the-art 4DOF registration methods. The experimental results showed that: (1) the accuracy of the proposed coarse registration method ranges from 0.02 m to 0.07 m in horizontal and 0.01 m to 0.02 m in elevation, which is at centimeter-level and sufficient for fine registration; and (2) as many as 120 million points can be registered in less than 50 s, which is much faster than the compared methods.

Highlights

  • Light detection and ranging (LiDAR) scanning, including Terrestrial LiDAR Scanning (TLS) [1], Personal LiDAR Scanning (PLS) [2], Mobile LiDAR Scanning (MLS) [3], and Airborne LiDAR Scanning (ALS) [4], can acquire dense point clouds of target scenes directly and efficiently

  • The point cloud obtained by the Trimble SX10 scanner is much sparser than the point clouds obtained by RIEGL VZ-400, and points with a scanning distance larger than 70 m are eliminated for DTRIMBLE-1 and DTRIMBLE-2

  • To improve the coarse registration efficiency of large-scale dense TLS point clouds, this paper proposed to reduce the 6DOF registration problem to 4DOF, by fully considering the fact that the laser scanner is usually leveled and compensated by built-in inclination sensors in data acquisition

Read more

Summary

Introduction

Light detection and ranging (LiDAR) scanning, including Terrestrial LiDAR Scanning (TLS) [1], Personal LiDAR Scanning (PLS) [2], Mobile LiDAR Scanning (MLS) [3], and Airborne LiDAR Scanning (ALS) [4], can acquire dense point clouds of target scenes directly and efficiently. Terrestrial LiDAR scanning scans the whole target scene station by station and registration is essential to align point clouds obtained from different stations to a unified frame [12,13,14,15,16,17,18]. The point clouds obtained by different LiDAR scanning platforms, such as TLS and MLS, are often merged to obtain more complete coverage of the target scenes. In such situations, registration of different platform point clouds is necessary [19,20]

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call