A copy of this work was available on the public web and has been preserved in the Wayback Machine. The capture dates from 2020; you can also visit the original URL.
The file type is application/pdf
.
Motion Planning Networks: Bridging the Gap Between Learning-based and Classical Motion Planners
[article]
2020
arXiv
pre-print
This paper describes Motion Planning Networks (MPNet), a computationally efficient, learning-based neural planner for solving motion planning problems. MPNet uses neural networks to learn general near-optimal heuristics for path planning in seen and unseen environments. It takes environment information such as raw point-cloud from depth sensors, as well as a robot's initial and desired goal configurations and recursively calls itself to bidirectionally generate connectable paths. In addition to
arXiv:1907.06013v3
fatcat:a7ynhrxnobcoloo6faf4np5rq4