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Numerical optimization on the Euclidean group with applications to camera calibration

机译:欧几里得群的数值优化及其在相机标定中的应用

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摘要

We present the cyclic coordinate descent (CCD) algorithm for optimizing quadratic objective functions on SE(3), and apply it to a class of robot sensor calibration problems. Exploiting the fact that SE(3) is the semidirect product of SO(3) and /spl Rfr//sup 3/, we show that by cyclically optimizing between these two spaces, global convergence can be assured under a mild set of assumptions. The CCD algorithm is also invariant with respect to choice of fixed reference frame (i.e., left invariant, as required by the principle of objectivity). Examples from camera calibration confirm the simplicity, efficiency, and robustness of the CCD algorithm on SE(3), and its wide applicability to problems of practical interest in robotics.
机译:我们提出了用于优化SE(3)上的二次目标函数的循环坐标下降(CCD)算法,并将其应用于一类机器人传感器校准问题。利用SE(3)是SO(3)和/ spl Rfr // sup 3 /的半直接产品这一事实,我们表明,通过在这两个空间之间进行循环优化,可以在温和的一组假设下确保全局收敛。 CCD算法对于固定参考系的选择也是不变的(即,如客观性原理所要求的那样是不变的)。相机校准的例子证实了SE(3)上CCD算法的简单性,效率和鲁棒性,以及它在机器人技术中的实际应用问题的广泛适用性。

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