Motion planning with sequential convex optimization and convex collision checking
University of California, Berkeley
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Abstract
We present a new optimization-based approach for robotic motion planning among obstacles. Like CHOMP (Covariant Hamiltonian Optimization for Motion Planning), our algorithm can be used to find collision-free trajectories from naïve, straight-line initializations that might be in collision. At the core of our approach are (a) a sequential convex optimization procedure, which penalizes collisions with a hinge loss and increases the penalty coefficients in an outer loop as necessary, and (b) an efficient formulation of the no-collisions constraint that directly considers continuous-time safety Our algorithm is implemented in a software package called TrajOpt. We report results from a series of experiments…
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Topics
Keywords
- Motion planning
- Computer science
- Robot
- Regular polygon
- Humanoid robot
- Configuration space
- Collision
- Trajectory
UN Sustainable Development Goals
- Sustainable cities and communities
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