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Abstract: Multiview structure recovery from a collection of images requires the recovery of the positions and orientations of the cameras relative to a global coordinate system. Our approach recovers camera motion as a sequence of two global optimizations. First, pairwise Essential Matrices are used to recover the global rotations by applying robust optimization using either spectral or semidefinite programming relaxations. Then, we directly employ feature correspondences across images to recover the global translation vectors using a linear algorithm based on a novel decomposition of the Essential Matrix. Our method is efficient and, as demonstrated in our experiments, achieves highly accurate results on collections of real images for which ground truth measurements are available.
Publication Date: 2012
Electronic Publication Date: 6-Dec-2012
Citation: Arie-Nachimson, Mica, Kovalsky, Shahar Z, Kemelmacher-Shlizerman, Ira, Singer, Amit, Basri, Ronen. (2012). Global Motion Estimation from Point Matches. SECOND JOINT 3DIM/3DPVT CONFERENCE: 3D IMAGING, MODELING, PROCESSING, VISUALIZATION & TRANSMISSION (3DIMPVT 2012), 81 - 88. doi:10.1109/3DIMPVT.2012.46
DOI: doi:10.1109/3DIMPVT.2012.46
Pages: 81 - 88
Type of Material: Conference Article
Journal/Proceeding Title: SECOND JOINT 3DIM/3DPVT CONFERENCE: 3D IMAGING, MODELING, PROCESSING, VISUALIZATION & TRANSMISSION (3DIMPVT 2012)
Version: Author's manuscript



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