ROJun 22, 2021

Total Least Squares for Optimal Pose Estimation

arXiv:2106.11522v23 citations
AI Analysis

This work provides an incremental improvement for robotics and computer vision applications by extending error-correlation handling beyond isotropic noise assumptions.

The paper tackles the pose estimation problem by developing a total least squares framework for vector observations from landmarks, proving that the attitude and position solutions achieve the Cramér-Rao lower bound under small-angle approximations.

This work provides a theoretical framework for the pose estimation problem using total least squares for vector observations from landmark features. First, the optimization framework is formulated with observation vectors extracted from point cloud features. Then, error-covariance expressions are derived. The attitude and position solutions obtained via the derived optimization framework are proven to reach the bounds defined by the Cramér-Rao lower bound under the small-angle approximation of attitude errors. The measurement data for the simulation of this problem is provided through a series of vector observation scans, and a fully populated observation noise-covariance matrix is assumed as the weight in the cost function to cover the most general case of the sensor uncertainty. Here, previous derivations are expanded for the pose estimation problem to include more generic correlations in the errors than previous cases involving an isotropic noise assumption. The proposed solution is simulated in a Monte-Carlo framework to validate the error-covariance analysis.

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