Interactive Multi-Modal Motion Planning With Branch Model Predictive Control
Abstract
Motion planning for autonomous robots and vehicles in presence of uncontrolled agents remains a challenging problem as the reactive behaviors of the uncontrolled agents must be considered. Since the uncontrolled agents usually demonstrate multimodal reactive behavior, the motion planner needs to solve a continuous motion planning problem under these behaviors, which contains a discrete element. We propose a branch Model Predictive Control (MPC) framework that plans over feedback policies to leverage the reactive behavior of the uncontrolled agent. In particular, a scenario tree is constructed from a finite set of policies of the uncontrolled agent, and the branch MPC solves for a feedback policy in the form of a trajectory tree, which shares the same topology as the scenario tree. Moreover, coherent risk measures such as the Conditional Value at Risk (CVaR) are used as a tuning knob to adjust the tradeoff between performance and robustness. The proposed branch MPC framework is tested on an autonomous vehicle planning problem in simulation, and on an autonomous quadruped robot alongside an uncontrolled quadruped in experiments. The result demonstrates interesting human-like behaviors, achieving a balance between safety and performance.
Additional Information
© 2022 IEEE. Manuscript received October 10, 2021; accepted February 17, 2022. Date of publication March 7, 2022; date of current version March 15, 2022. This letter was recommended for publication by Associate Editor Mohan Rajesh Elara and Editor Gentiane Venture upon evaluation of the reviewers' comments.Attached Files
Submitted - 2109.05128v2.pdf
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Additional details
- Eprint ID
- 113935
- Resolver ID
- CaltechAUTHORS:20220317-375745000
- Created
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2022-03-18Created from EPrint's datestamp field
- Updated
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2022-03-18Created from EPrint's last_modified field