CVPR2020
Optimal least-squares solution to the hand-eye calibration problem
Amit Dekel, Linus Härenstam-Nielsen, Sergio Caccamo
Abstract
We propose a least-squares formulation to the noisy handeye calibration problem using dual-quaternions, and introduce efficient algorithms to find the exact optimal solution, based on analytic properties of the problem, avoiding nonlinear optimization. We further present simple analytic approximate solutions which provide remarkably good estimations compared to the exact solution. In addition, we show how to generalize our solution to account for a given extrinsic prior in the cost function. To the best of our knowledge our algorithm is the most efficient approach to optimally solve the hand-eye calibration problem.