Continuous Planning for Inertial-Aided Systems
Inertial-aided systems require continuous motion excitation among other reasons to characterize the measurement biases that will enable accurate integration required for localization frameworks. This paper proposes the use of informative path planning to find the best trajectory for minimizing the u...
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Zusammenfassung: | Inertial-aided systems require continuous motion excitation among other
reasons to characterize the measurement biases that will enable accurate
integration required for localization frameworks. This paper proposes the use
of informative path planning to find the best trajectory for minimizing the
uncertainty of IMU biases and an adaptive traces method to guide the planner
towards trajectories which aid convergence. The key contribution is a novel
regression method based on Gaussian Process (GP) to enforce continuity and
differentiability between waypoints from a variant of the RRT* planning
algorithm. We employ linear operators applied to the GP kernel function to
infer not only continuous position trajectories, but also velocities and
accelerations. The use of linear functionals enable velocity and acceleration
constraints given by the IMU measurements to be imposed on the position GP
model. The results from both simulation and real world experiments show that
planning for IMU bias convergence helps minimize localization errors in state
estimation frameworks. |
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DOI: | 10.48550/arxiv.2209.05285 |