Please use this identifier to cite or link to this item: https://hdl.handle.net/1783.1/84019
3D Shape Modeling Using A Self-Developed Hand-Held 3D Laser Scanner And An Efficient HT-ICP Point Cloud Registration Algorithm
Author |
Chen, Jia
Wu, Xiaojun Wang, Michael Yu Li, Xuanfu |
---|---|
Issue Date | 2013 |
Source | Optics and Laser Technology, v.45, (1), February 2013, p. 414-423 |
Abstract | Firstly, we develop a cost-efficient hand-held three-dimensional (3D) laser scanner for optical 3D laser scan data acquisition. Then, an automatic registration algorithm is used for 3D laser scanning based 3D shape modeling. Inspired by the use of twist to parameterize rigid motion in workpiece localization, we present the Hong-Tan based ICP (Iterative Closest Point) automatic registration algorithm (named HT-ICP) for partially overlapping point clouds. Using the point clouds from Stanford 3D Scanning Repository, we compare HT-ICP with the original ICP algorithm and its main variants, and experimental results show that the HT-ICP algorithm improves both the speed and accuracy of registration. Then we give the performance analysis with increasing amount of noise, and show the power of the 4PCSHT-ICP strategy for working directly on the raw noisy data. Furthermore, in the process of complete 3D shape modeling of Venus-head-statue, we demonstrate the effectiveness of the HT-ICP algorithm when aligning the actually acquired noisy point clouds from our self-developed low-precision hand-held scanner. © 2012 Elsevier Ltd. |
Subject | |
DOI | 10.1016/j.optlastec.2012.06.015 |
ISSN | 0030-3992 |
Language | English |
Type | Article |
Access |
View full-text via Browzine View details via DOI View details via Scopus View details via Web of Science |