상세 보기
- Sangyoon Park;
- SUNGHA JU;
- Sanghyun YOON;
- HIEUNGUYEN;
- JOON HEO
WEB OF SCIENCE
15SCOPUS
0초록
Change detection between as-planned building information modeling (BIM) and the as-is point cloud requires significant computational overhead because it must deal with every geometric face in the BIM and every point in the point cloud one-to-one. To address this problem, this study presents a high-performance algorithm to detect discrepancies between an as-planned BIM and the as-is point cloud automatically. This method is a data structure approach based on modifiable nested octree indexing of surface meshes and point clouds. The results of ex-periments showed a significant computation performance improvement: 25.3 and 12.1 times faster than the baseline method for a complex plant facility and a simple indoor building, respectively. Furthermore, it was demonstrated that as the number of meshes in the BIM geometry increased, the time complexity of the proposed approach could be represented as a big O-notation,O(logN), where N is the number of meshes in the BIM geometry.
키워드
- 제목
- An efficient data structure approach for BIM-to-point-cloud change detection using modifiable nested octree
- 저자
- Sangyoon Park; SUNGHA JU; Sanghyun YOON; HIEUNGUYEN; JOON HEO
- 발행일
- 2021-12
- 권
- 132
- 페이지
- 103922-1 ~ 103922-15