Locally Optimal Solutions to Constraint Displacement Problems via Path-Obstacle Overlaps
Antony Thomas, Fulvio Mastrogiovanni, Marco Baglietto
- Year
- 2025
- Access
- Open access
Abstract
We present a unified approach for constraint displacement problems in which a robot finds a feasible path by displacing constraints or obstacles. To this end, we propose a two stage process that returns locally optimal obstacle displacements to enable a feasible path for the robot. The first stage proceeds by computing a trajectory through the obstacles while minimizing an appropriate objective function. In the second stage, these obstacles are displaced to make the computed robot trajectory feasible, that is, collision-free. Several examples are provided that successfully demonstrate our approach on two distinct classes of constraint displacement problems.
Keywords
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