Publication | Closed Access
Lifting 3D Manhattan Lines from a Single Image
68
Citations
26
References
2013
Year
Unknown Venue
Geometric Modeling3D Computer VisionYork Urban DatabaseMachine VisionImage AnalysisEngineeringNatural SciencesComputer-aided DesignPlausible Connectivity ConstraintsStructure From MotionManhattan Lines3D ReconstructionComputational GeometryLinear ProgrammingMulti-view GeometryScene Modeling3D ScanningComputer Vision
We propose a novel and an efficient method for reconstructing the 3D arrangement of lines extracted from a single image, using vanishing points, orthogonal structure, and an optimization procedure that considers all plausible connectivity constraints between lines. Line detection identifies a large number of salient lines that intersect or nearly intersect in an image, but relatively a few of these apparent junctions correspond to real intersections in the 3D scene. We use linear programming (LP) to identify a minimal set of least-violated connectivity constraints that are sufficient to unambiguously reconstruct the 3D lines. In contrast to prior solutions that primarily focused on well-behaved synthetic line drawings with severely restricting assumptions, we develop an algorithm that can work on real images. The algorithm produces line reconstruction by identifying 95% correct connectivity constraints in York Urban database, with a total computation time of 1 second per image.
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2007 | 678 | |
1971 | 674 | |
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2007 | 619 | |
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