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Rethinking Trajectory Evaluation for SLAM: a Probabilistic, Continuous-Time Approach

Published 6 years agoVersion 1arXiv:1906.03996

Authors

Zichao Zhang, Davide Scaramuzza

Categories

cs.RO

Abstract

Despite the existence of different error metrics for trajectory evaluation in SLAM, their theoretical justifications and connections are rarely studied, and few methods handle temporal association properly. In this work, we propose to formulate the trajectory evaluation problem in a probabilistic, continuous-time framework. By modeling the groundtruth as random variables, the concepts of absolute and relative error are generalized to be likelihood. Moreover, the groundtruth is represented as a piecewise Gaussian Process in continuous-time. Within this framework, we are able to establish theoretical connections between relative and absolute error metrics and handle temporal association in a principled manner.

Rethinking Trajectory Evaluation for SLAM: a Probabilistic, Continuous-Time Approach

6 years ago
v1
2 authors

Categories

cs.RO

Abstract

Despite the existence of different error metrics for trajectory evaluation in SLAM, their theoretical justifications and connections are rarely studied, and few methods handle temporal association properly. In this work, we propose to formulate the trajectory evaluation problem in a probabilistic, continuous-time framework. By modeling the groundtruth as random variables, the concepts of absolute and relative error are generalized to be likelihood. Moreover, the groundtruth is represented as a piecewise Gaussian Process in continuous-time. Within this framework, we are able to establish theoretical connections between relative and absolute error metrics and handle temporal association in a principled manner.

Authors

Zichao Zhang, Davide Scaramuzza

arXiv ID: 1906.03996
Published Jun 10, 2019

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