Title :
Fast and globally convergent pose estimation from video images
Author :
Lu, Chien-Ping ; Hager, Gregory D. ; Mjolsness, Eric
Author_Institution :
IBEAM Broadcasting Corp., Sunnyvale, CA, USA
fDate :
6/1/2000 12:00:00 AM
Abstract :
Determining the rigid transformation relating 2D images to known 3D geometry is a classical problem in photogrammetry and computer vision. Heretofore, the best methods for solving the problem have relied on iterative optimization methods which cannot be proven to converge and/or which do not effectively account for the orthonormal structure of rotation matrices. We show that the pose estimation problem can be formulated as that of minimizing an error metric based on collinearity in object (as opposed to image) space. Using object space collinearity error, we derive an iterative algorithm which directly computes orthogonal rotation matrices and which is globally convergent. Experimentally, we show that the method is computationally efficient, that it is no less accurate than the best currently employed optimization methods, and that it outperforms all tested methods in robustness to outliers
Keywords :
computational complexity; computer vision; convergence; iterative methods; matrix algebra; minimisation; photogrammetry; video signal processing; 2D images; computational efficiency; computer vision; error metric minimization; globally convergent pose estimation; iterative algorithm; object space collinearity error; orthogonal rotation matrices; orthonormal structure; outlier robustness; photogrammetry; rigid image transformation; rotation matrices; video images; Cameras; Computational geometry; Computer graphics; Computer vision; Image converters; Iterative algorithms; Iterative methods; Optimization methods; Robot kinematics; Robot vision systems;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on