Minimal Non-Linear Camera Pose Estimation Method Using Lines For Slam Applications

2018 IEEE WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION (WACV 2018)(2018)

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摘要
In order to continuously estimate camera pose with known line features correspondences between 3D lines in the real world and 2D lines in the image plane, we present a novel non-linear optimization method utilizing Plucker coordinates and a minimal representation of rigid motion. Inspired by the bundle adjustment pose estimation method, we use a minimal 6 Degree of Freedom (DoF) vector to denote rigid motion based on the Lie Algebra and Lie group theory. For the first time, we deduct the Jacobian matrix of the line's Plucker coordinates over the motion vector. Thus we are able to optimize the reprojection error to the minimal to find the solution with all the orthogonormality contraints fully considered. Benefited from the use of non-redundant representation of 6-DoF motion, our method requires only at least 3 lines correspondences, which makes our method applicable with limited matching pairs. Experiments in both simulation and real world images show that our method is fast, accurate, robust and suitable for motion-only Bundle Adjustment pose estimation in SLAM applications.
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关键词
minimal nonlinear camera pose estimation method,SLAM application,image plane,novel nonlinear optimization method,Plücker coordinates,motion vector,nonredundant representation,Jacobian matrix,limited matching pairs,reprojection error optimization,line features correspondences,Lie group theory,Lie algebra,minimal 6 degree-of-freedom vector,bundle adjustment pose estimation method,minimal rigid motion representation,2D lines,3D lines
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