Cost-to-Go Function Generating Networks for High Dimensional Motion Planning
Jinwook Huh,Volkan Isler,Daniel D. Lee,Jinwook Huh,Volkan Isler,Daniel D. Lee
This paper presents c2g-HOF networks which learn to generate cost-to-go functions for manipulator motion planning. The c2g-HOF architecture consists of a cost-to-go function over the configuration space represented as a neural network (c2g-network) as well as a Higher Order Function (HOF) network which outputs the weights of the c2g-network for a given input workspace. Both networks are trained en...