Abstract

The similarity transformation between two coordinate frames, is widely adopted in science and engineering. The transformation parameters are estimated using coordinate determinations of a set of common points in both frames. The quaternion is employed to represent the rotation transformation; and a 3×1 error vector is defined to represent the quaternion estimation error. Coordinate determinations in both frames are assumed noisy. An analytical least-squares solution is derived in which the quaternion estimate is the eigenvector of a 4×4 symmetric matrix corresponding to its largest eigenvalue. It is found that as long as a practically meaningful quaternion estimate exists, the largest eigenvalue must be single. Error analysis of this solution is investigated in detail in which the error analysis of the largest eigenvalue-eigenvector pair plays a pivotal role. Monte Carlo experiments are conducted and the results validate the consistency of the developed error analysis.

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