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Surface reconstruction from unorganized points (1992)

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by Hugues Hoppe , Tony DeRose , Tom Duchamp , John Mcdonald , Werner Stuetzle
Venue:COMPUTER GRAPHICS (SIGGRAPH ’92 PROCEEDINGS)
Citations:538 - 8 self
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DatumValueSource
TITLE Surface Reconstruction from Unorganized Points SVM HeaderParse 0.2
AUTHOR NAME Tony Derose SVM HeaderParse 0.2
AUTHOR ADDR Seattle, WA 98195 SVM HeaderParse 0.2
AUTHOR NAME Tom Duchampy SVM HeaderParse 0.2
AUTHOR ADDR Seattle, WA 98195 SVM HeaderParse 0.2
AUTHOR NAME John Mcdonaldz SVM HeaderParse 0.2
AUTHOR ADDR Seattle, WA 98195 SVM HeaderParse 0.2
AUTHOR NAME Werner Stuetzlez SVM HeaderParse 0.2
AUTHOR ADDR Seattle, WA 98195 SVM HeaderParse 0.2
ABSTRACT We describe and demonstrate an algorithm that takes as input an unorganized set of points fx1�:::�xng IR 3 on or near an unknown manifold M, and produces as output a simplicial surface that approximates M. Neither the topology, the presence of boundaries, nor the geometry of M are assumed to be known in advance — all are inferred automatically from the data. This problem naturally arises in a variety of practical situations such as range scanning an object from multiple view points, recovery of biological shapes from two-dimensional slices, and interactive surface sketching. SVM HeaderParse 0.2
CITATIONS 18 found ParsCit 1.0
The National Science Foundation
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