Shape controllable geometry completion for point cloud models
Abstract
Introduction
Related Work
Formulation of our geometry completion algorithm
Algorithm overview
Determining hole-boundary
Position sampling
Generating new hole-boundary
Constructing hole-boundary control curve
Sampling along the boundary control curve
Feature constraint
Results and discussion
Conclusion
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Shape controllable geometry completion for point cloud models
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