Structure-From-Motion Revisited
Structure-from-Motion Revisited Johannes L. Schonberger¨ 1,2∗, Jan-Michael Frahm1 1University of North Carolina at Chapel Hill 2Eidgenossische Technische Hochschule Z¨ urich¨ [email protected], [email protected] Abstract Incremental Structure-from-Motion is a prevalent strat-egy for 3D reconstruction from unordered image collec-tions.
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