STEAP: simultaneous trajectory estimation and planning
This addresses the challenge of real-time trajectory optimization for robots under uncertainty, though it builds incrementally on existing probabilistic inference methods.
The paper tackles the problem of separating trajectory estimation and planning in robotics by proposing a unified probabilistic framework that solves them simultaneously, resulting in improved accuracy and efficiency, with empirical evaluation in simulation and on a mobile manipulator.
We present a unified probabilistic framework for simultaneous trajectory estimation and planning (STEAP). Estimation and planning problems are usually considered separately, however, within our framework we show that solving them simultaneously can be more accurate and efficient. The key idea is to compute the full continuous-time trajectory from start to goal at each time-step. While the robot traverses the trajectory, the history portion of the trajectory signifies the solution to the estimation problem, and the future portion of the trajectory signifies a solution to the planning problem. Building on recent probabilistic inference approaches to continuous-time localization and mapping and continuous-time motion planning, we solve the joint problem by iteratively recomputing the maximum a posteriori trajectory conditioned on all available sensor data and cost information. Our approach can contend with high-degree-of-freedom (DOF) trajectory spaces, uncertainty due to limited sensing capabilities, model inaccuracy, the stochastic effect of executing actions, and can find a solution in real-time. We evaluate our framework empirically in both simulation and on a mobile manipulator.