2014
DOI: 10.1016/j.isprsjprs.2014.02.004
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Indoor scene reconstruction using feature sensitive primitive extraction and graph-cut

Abstract: We present a method for automatic reconstruction of permanent structures, such as walls, floors and ceilings, given a raw point cloud of an indoor scene. The main idea behind our approach is a graph-cut formulation to solve an inside/outside labeling of a space partitioning. We first partition the space in order to align the reconstructed models with permanent structures. The horizontal structures are located through analysis of the vertical point distribution, while vertical wall structures are detected throu… Show more

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Cited by 199 publications
(210 citation statements)
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“…In practice, most existing methods reconstruct geometric elements only (Becker et al, 2015;Díaz-Vilariño et al, 2015;Mura et al, 2016;Oesau et al, 2014;Sanchez and Zakhor, 2012;Thomson and Boehm, 2015;Valero et al, 2012;Xiao and Furukawa, 2012;Xiong et al, 2013), while a few can model spaces and the topological relations between them (Khoshelham and Díaz-Vilariño, 2014;Tran et al, 2017). Nonetheless, a comprehensive evaluation should take into account all three components of an indoor model.…”
Section: Evaluation Criteriamentioning
confidence: 99%
“…In practice, most existing methods reconstruct geometric elements only (Becker et al, 2015;Díaz-Vilariño et al, 2015;Mura et al, 2016;Oesau et al, 2014;Sanchez and Zakhor, 2012;Thomson and Boehm, 2015;Valero et al, 2012;Xiao and Furukawa, 2012;Xiong et al, 2013), while a few can model spaces and the topological relations between them (Khoshelham and Díaz-Vilariño, 2014;Tran et al, 2017). Nonetheless, a comprehensive evaluation should take into account all three components of an indoor model.…”
Section: Evaluation Criteriamentioning
confidence: 99%
“…Their method works well for stationary terrestrial scanning data, but not for the data from indoor mobile LiDAR system. (Oesau et al, 2014) present a two-line multi-scale fitting method to label the rooms through an energy function optimization based on graph cut and the line-of-sight information from each point to the laser scanner. However, their method can only extract the building outer walls and omit the inner walls.…”
Section: Related Workmentioning
confidence: 99%
“…Space partitioning is a necessary step for surface reconstruction via graph cuts (Chauve et al, 2010;Oesau et al, 2014). It can be accomplished via various approaches, such as voxel rasterization (Chehata et al, 2009;Paris et al, 2006), 3D Delaunay triangulation (Labatut et al, 2007;Labatut et al, 2009) and space subdivision by hyperplanes (Chauve et al, 2010;Oesau et al, 2014).…”
Section: Space Partitioningmentioning
confidence: 99%
“…It can be accomplished via various approaches, such as voxel rasterization (Chehata et al, 2009;Paris et al, 2006), 3D Delaunay triangulation (Labatut et al, 2007;Labatut et al, 2009) and space subdivision by hyperplanes (Chauve et al, 2010;Oesau et al, 2014). Note that the surfaces of the reconstructed building are the subset of the volumetric surfaces derived from space partitioning.…”
Section: Space Partitioningmentioning
confidence: 99%