Exploring foci of:
arXiv (Cornell University)
Learning Parametric Constraints in High Dimensions from Demonstrations
October 2019 • Glen Chou, Necmiye Özay, Dmitry Berenson
We present a scalable algorithm for learning parametric constraints in high dimensions from safe expert demonstrations. To reduce the ill-posedness of the constraint recovery problem, our method uses hit-and-run sampling to generate lower cost, and thus unsafe, trajectories. Both safe and unsafe trajectories are used to obtain a representation of the unsafe set that is compatible with the data by solving an integer program in that representation's parameter space. Our method can either leverage a known parameteriz…
Computer Science
Algorithm
Artificial Intelligence
Mathematics
Statistics
Computer Vision
Law
Programming Language
Database
Geometry
Oceanography
Politics