Autotuning Symbolic Optimization Fabrics for Trajectory Generation
Max Spahn, Javier Alonso-Mora
Abstract
In this paper, we present an automated parameter optimization method for trajectory generation. We formulate parameter optimization as a constrained optimization problem that can be effectively solved using Bayesian optimization. While the approach is generic to any trajectory generation method, we showcase it using optimization fabrics. Optimiza- tion fabrics are a geometric trajectory generation method based on non-Riemannian geometry. By symbolically pre-solving the structure of the tree of fabrics, we obtain a parameterized trajectory generator, called symbolic fabrics. We show that autotuned symbolic fabrics reach expert-level performance in a few trials. Additionally, we show that tuning transfers across different robots, motion planning problems and between sim- ulation and real world. Finally, we qualitatively showcase that the framework could be used for coupled mobile manipulation. Code github.com/maxspahn/optuna fabrics