Improving Sparse 3D Models for Man-Made Environments Using Line-Based 3D Reconstruction

3DV), 2014 2nd International Conference(2014)

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摘要
Traditional Structure-from-Motion (SfM) approaches work well for richly textured scenes with a high number of distinctive feature points. Since man-made environments often contain texture less objects, the resulting point cloud suffers from a low density in corresponding scene parts. The missing 3D information heavily affects all kinds of subsequent post-processing tasks (e.g. Meshing), and significantly decreases the visual appearance of the resulting 3D model. We propose a novel 3D reconstruction approach, which uses the output of conventional SfM pipelines to generate additional complementary 3D information, by exploiting line segments. We use appearance-less epipolar guided line matching to create a potentially large set of 3D line hypotheses, which are then verified using a global graph clustering procedure. We show that our proposed method outperforms the current state-of-the-art in terms of runtime and accuracy, as well as visual appearance of the resulting reconstructions.
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关键词
graph theory,image matching,image motion analysis,image reconstruction,pattern clustering,solid modelling,3D line hypotheses,appearance-less epipolar guided line matching,global graph clustering procedure,line-based 3D reconstruction,man-made environments,resulting point cloud,sparse 3D model improvement,structure-from-motion approach,subsequent post-processing tasks,visual appearance,3D reconstruction,line segments,multi-view stereo,structure-from-motion
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