TY - GEN
T1 - Non-local scan consolidation for 3D urban scenes
AU - Zheng, Qian
AU - Sharf, Andrei
AU - Wan, Guowei
AU - Li, Yangyan
AU - Mitra, Niloy J.
AU - Cohen-Or, Daniel
AU - Chen, Baoquan
N1 - Funding Information:
We thank Shachar Fleishman for his thoughtful comments and the anonymous reviewers for their valuable suggestions. This work was supported in part by National Natural Science Foundation of China (60902104), National High-tech R&D Program of China (2009AA01Z302), CAS Visiting Professorship for Senior International Scientists, CAS Fellowship for Young International Scientists, Shenzhen Science and Technology Foundation (GJ200807210013A). Niloy was partially supported by a Microsoft outstanding young faculty fellowship.
Publisher Copyright:
© 2010 ACM.
PY - 2010/7/26
Y1 - 2010/7/26
N2 - Recent advances in scanning technologies, in particular devices that extract depth through active sensing, allow fast scanning of urban scenes. Such rapid acquisition incurs imperfections: large regions remain missing, significant variation in sampling density is common, and the data is often corrupted with noise and outliers. However, buildings often exhibit large scale repetitions and self-similarities. Detecting, extracting, and utilizing such large scale repetitions provide powerful means to consolidate the imperfect data. Our key observation is that the same geometry, when scanned multiple times over reoccurrences of instances, allow application of a simple yet effective non-local filtering. The multiplicity of the geometry is fused together and projected to a base-geometry defined by clustering corresponding surfaces. Denoising is applied by separating the process into off-plane and in-plane phases. We show that the consolidation of the reoccurrences provides robust denoising and allow reliable completion of missing parts. We present evaluation results of the algorithm on several LiDAR scans of buildings of varying complexity and styles.
AB - Recent advances in scanning technologies, in particular devices that extract depth through active sensing, allow fast scanning of urban scenes. Such rapid acquisition incurs imperfections: large regions remain missing, significant variation in sampling density is common, and the data is often corrupted with noise and outliers. However, buildings often exhibit large scale repetitions and self-similarities. Detecting, extracting, and utilizing such large scale repetitions provide powerful means to consolidate the imperfect data. Our key observation is that the same geometry, when scanned multiple times over reoccurrences of instances, allow application of a simple yet effective non-local filtering. The multiplicity of the geometry is fused together and projected to a base-geometry defined by clustering corresponding surfaces. Denoising is applied by separating the process into off-plane and in-plane phases. We show that the consolidation of the reoccurrences provides robust denoising and allow reliable completion of missing parts. We present evaluation results of the algorithm on several LiDAR scans of buildings of varying complexity and styles.
UR - http://www.scopus.com/inward/record.url?scp=84941592728&partnerID=8YFLogxK
U2 - 10.1145/1778765.1778831
DO - 10.1145/1778765.1778831
M3 - Conference contribution
AN - SCOPUS:84941592728
T3 - ACM SIGGRAPH 2010 Papers, SIGGRAPH 2010
BT - ACM SIGGRAPH 2010 Papers, SIGGRAPH 2010
A2 - Hoppe, Hugues
PB - Association for Computing Machinery, Inc
T2 - 37th International Conference and Exhibition on Computer Graphics and Interactive Techniques, SIGGRAPH 2010
Y2 - 26 July 2010 through 30 July 2010
ER -