期刊名称: |
Sensors |
全部作者: |
Tang Shenjun,Zhang Yunjie,Li You,Yuan Zhilu,Wang Yankun,Zhang Xiang,Li Xiaoming,Zhang Yeting,Guo Renzhong,Wang Weixi |
出版年份: |
2019 |
卷 号: |
19, 533 |
期 号: |
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页 码: |
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查看全本: |
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Semantically rich indoor models are increasingly used throughout a facility’s life cycle for
different applications. With the decreasing price of 3D sensors, it is convenient to acquire point cloud
data from consumer-level scanners. However, most existing methods in 3D indoor reconstruction
from point clouds involve a tedious manual or interactive process due to line-of-sight occlusions and
complex space structures. Using the multiple types of data obtained by RGB-D devices, this paper
proposes a fast and automatic method for reconstructing semantically rich indoor 3D building models
from low-quality RGB-D sequences. Our method is capable of identifying and modelling the main
structural components of indoor environments such as space, wall, floor, ceilings, windows, and doors
from the RGB-D datasets. The method includes space division and extraction, opening extraction,
and global optimization. For space division and extraction, rather than distinguishing room spaces
based on the detected wall planes, we interactively define the start-stop position for each functional
space (e.g., room, corridor, kitchen) during scanning. Then, an interior elements filtering algorithm is
proposed for wall component extraction and a boundary generation algorithm is used for space layout
determination. For opening extraction, we propose a new noise robustness method based on the
properties of convex hull, octrees structure, Euclidean clusters and the camera trajectory for opening
generation, which is inapplicable to the data collected in the indoor environments due to inevitable
occlusion. A global optimization approach for planes is designed to eliminate the inconsistency of
planes sharing the same global plane, and maintain plausible connectivity between the walls and the
relationships between the walls and openings. The final model is stored according to the CityGML3.0
standard. Our approach allows for the robust generation of semantically rich 3D indoor models and
has strong applicability and reconstruction power for complex real-world datasets.