Curved Buildings Reconstruction from Airborne LiDAR Data by Matching and
Deforming Geometric Primitives
- URL: http://arxiv.org/abs/2003.09934v1
- Date: Sun, 22 Mar 2020 16:05:10 GMT
- Title: Curved Buildings Reconstruction from Airborne LiDAR Data by Matching and
Deforming Geometric Primitives
- Authors: Jingwei Song, Shaobo Xia, Jun Wang, Dong Chen
- Abstract summary: We propose a new framework for curved building reconstruction via assembling and deforming geometric primitives.
The presented framework is validated on several highly curved buildings collected by various LiDAR in different cities.
- Score: 13.777047260469677
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Airborne LiDAR (Light Detection and Ranging) data is widely applied in
building reconstruction, with studies reporting success in typical buildings.
However, the reconstruction of curved buildings remains an open research
problem. To this end, we propose a new framework for curved building
reconstruction via assembling and deforming geometric primitives. The input
LiDAR point cloud are first converted into contours where individual buildings
are identified. After recognizing geometric units (primitives) from building
contours, we get initial models by matching basic geometric primitives to these
primitives. To polish assembly models, we employ a warping field for model
refinements. Specifically, an embedded deformation (ED) graph is constructed
via downsampling the initial model. Then, the point-to-model displacements are
minimized by adjusting node parameters in the ED graph based on our objective
function. The presented framework is validated on several highly curved
buildings collected by various LiDAR in different cities. The experimental
results, as well as accuracy comparison, demonstrate the advantage and
effectiveness of our method. {The new insight attributes to an efficient
reconstruction manner.} Moreover, we prove that the primitive-based framework
significantly reduces the data storage to 10-20 percent of classical mesh
models.
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