Learning to Generate Cost-to-Go Functions for Efficient Motion Planning
Traditional motion planning is computationally burdensome for practical robots, involving extensive collision checking and considerable iterative propagation of cost values. We present a novel neural network architecture which can directly generate the cost-to-go (c2g) function for a given configura...
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Zusammenfassung: | Traditional motion planning is computationally burdensome for practical
robots, involving extensive collision checking and considerable iterative
propagation of cost values. We present a novel neural network architecture
which can directly generate the cost-to-go (c2g) function for a given
configuration space and a goal configuration. The output of the network is a
continuous function whose gradient in configuration space can be directly used
to generate trajectories in motion planning without the need for protracted
iterations or extensive collision checking. This higher order function (i.e. a
function generating another function) representation lies at the core of our
motion planning architecture, c2g-HOF, which can take a workspace as input, and
generate the cost-to-go function over the configuration space map (C-map).
Simulation results for 2D and 3D environments show that c2g-HOF can be orders
of magnitude faster at execution time than methods which explore the
configuration space during execution. We also present an implementation of
c2g-HOF which generates trajectories for robot manipulators directly from an
overhead image of the workspace. |
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DOI: | 10.48550/arxiv.2010.14597 |