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SfM with MRFs: Discrete-Continuous Optimization for Large-Scale Structure from Motion
PrePrint
ISSN: 0162-8828
David J. Crandall, Indiana University, Bloomington
Andrew Owens, Massachusetts Institute of Technology, Cambridge
Noah Snavely, Cornell University, Ithaca
Daniel P. Huttenlocher, Cornell University, Ithaca
Recent work in structure from motion (SfM) has built 3D models from large collections of images downloaded from the Internet. Many approaches to this problem use incremental algorithms that solve progressively larger bundle adjustment problems. These incremental techniques scale poorly as the image collection grows, and can suffer from drift or local minima. We present an alternative framework for SfM based on finding a coarse initial solution using hybrid discrete-continuous optimization, and then improving that solution using bundle adjustment. The initial optimization step uses a discrete Markov random field (MRF) formulation, coupled with a continuous Levenberg-Marquardt refinement. The formulation naturally incorporates various sources of information about both the cameras and points, including noisy geotags and vanishing point estimates. We test our method on several large-scale photo collections, including one with measured camera positions, and show that it produces models that are similar to or better than those produced by incremental bundle adjustment, but more robustly and in a fraction of the time.
Index Terms:
3D/stereo scene analysis,Computing Methodologies,Artificial Intelligence,Vision and Scene Understanding
Citation:
David J. Crandall, Andrew Owens, Noah Snavely, Daniel P. Huttenlocher, "SfM with MRFs: Discrete-Continuous Optimization for Large-Scale Structure from Motion," IEEE Transactions on Pattern Analysis and Machine Intelligence, 08 Oct. 2012. IEEE computer Society Digital Library. IEEE Computer Society, <http://doi.ieeecomputersociety.org/10.1109/TPAMI.2012.218>
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