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Technical Program
Paper Detail
Paper: | TP-P9.4 |
Session: | Stereoscopic and 3-D Processing |
Time: | Tuesday, October 10, 14:20 - 17:00 |
Presentation: |
Poster
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Title: |
ROBUST BUNDLE ADJUSTMENT FOR STRUCTURE FROM MOTION |
Authors: |
Ji Zhang; Purdue University | | | | Mireille Boutin; Purdue University | | | | Daniel Aliaga; Purdue University | | |
Abstract: |
Structure from motion (SFM) is the problem of reconstructing the geometry of a scene from a stream of images. In this problem, the geometry of the scene must be infered from images, along with the camera pose parameters. Bundle Adjustment (BA) is a refinement method used to improve SFM solutions. It consists in simultaneously improving a set of initial estimates for all parameters (structure and camera pose) by minimizing a global cost function. It is generally considered to be highly accurate, and so is typically used as a last refinement step in most current SFM methods. Unfortunately, estimating the pose of the camera from a stream of images is an ill-conditioned problem. We thus propose a BA adjustment formulation which does not involve solving for the camera orientations. We tested this approach on several real world models. The numerical results obtained show that this approach is much less affected by noise than traditional BA. |
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