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Neural Potential Field for Obstacle-Aware Local Motion Planning

Muhammad Alhaddad, Konstantin Mironov, Aleksei Staroverov, Aleksandr Panov

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Abstract

Model predictive control (MPC) may provide local motion planning for mobile robotic platforms. The challenging aspect is the analytic representation of collision cost for the case when both the obstacle map and robot footprint are arbitrary. We propose a Neural Potential Field: a neural network model that returns a differentiable collision cost based on robot pose, obstacle map, and robot footprint. The differentiability of our model allows its usage within the MPC solver. It is computa- tionally hard to solve problems with a very high number of parameters. Therefore, our architecture includes neural image encoders, which transform obstacle maps and robot footprints into embeddings, which reduce problem dimensionality by two orders of magnitude. The reference data for network training are generated based on algorithmic calculation of a signed distance function. Comparative experiments showed that the proposed approach is comparable with existing local planners: it provides trajectories with outperforming smoothness, com- parable path length, and safe distance from obstacles.

Index terms

Collision Avoidance Machine Learning for Robot Control Motion and Path Planning