期刊
COMPUTER GRAPHICS FORUM
卷 29, 期 5, 页码 1733-1741出版社
WILEY
DOI: 10.1111/j.1467-8659.2010.01782.x
关键词
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资金
- NSF [CCF-0811373, CMMI-0757106, CCF-1011944]
- INRIA associate teams
- Caltech
We propose a modular framework for robust 3D reconstruction from unorganized, unoriented, noisy, and outlier-ridden geometric data. We gain robustness and scalability over previous methods through an unsigned distance approximation to the input data followed by a global stochastic signing of the function. An isosurface reconstruction is finally deduced via a sparse linear solve. We show with experiments on large, raw, geometric datasets that this approach is scalable while robust to noise, outliers, and holes. The modularity of our approach facilitates customization of the pipeline components to exploit specific idiosyncracies of datasets, while the simplicity of each component leads to a straightforward implementation.
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