Title of article :
Surface reconstruction from point clouds by transforming the medial scaffold
Author/Authors :
Chang، نويسنده , , Ming-Ching and Leymarie، نويسنده , , Frederic Fol and Kimia، نويسنده , , Benjamin B.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
17
From page :
1130
To page :
1146
Abstract :
We propose an algorithm for surface reconstruction from unorganized points based on a view of the sampling process as a deformation from the original surface. In the course of this deformation the Medial Scaffold ( MS ) — a graph representation of the 3D Medial Axis ( MA ) — of the original surface undergoes abrupt topological changes (transitions) such that the MS of the unorganized point set is significantly different from that of the original surface. The algorithm seeks a sequence of transformations of the MS to invert this process. Specifically, some MS curves (junctions of 3 MA sheets) correspond to triplets of points on the surface and represent candidates for generating a (Delaunay) triangle to mesh that portion of the surface. We devise a greedy algorithm that iteratively transforms the MS by “removing” suitable candidate MS curves (gap transform) from a rank-ordered list sorted by a combination of properties of the MS curve and its neighborhood context. This approach is general and applicable to surfaces which are: non-closed (with boundaries), non-orientable, non-uniformly sampled, non-manifold (with self-intersections), non-smooth (with sharp features: seams, ridges). In addition, the method is comparable in speed and complexity to current popular Voronoi/Delaunay-based algorithms, and is applicable to very large datasets.
Keywords :
Non-smooth , Non-orientable , Non-uniform samplings , Surface mesh reconstruction , Unorganized points , Medial scaffold , Symmetry transforms , Non-closed , Non-manifold , 3D medial axis
Journal title :
Computer Vision and Image Understanding
Serial Year :
2009
Journal title :
Computer Vision and Image Understanding
Record number :
1695701
Link To Document :
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