Multiframe structure from motion in perspective
- 19 November 2002
- proceedings article
- Published by Institute of Electrical and Electronics Engineers (IEEE)
Abstract
A new approach to multiframe structure from motion for point features is presented. Unlike previous approaches, it gives robust reconstruction in situations commonly encountered in outdoor robot navigation, for general motion and with large perspective effects. Under the appropriate conditions, the algorithm provably gives the correct reconstruction. The typical computation time is seconds. It is argued that the new approach, combined with previous algorithms valid in other domains (e.g., Tomasi's algorithm), gives a general method for structure from motion.Keywords
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