Predicting Sample Collision with Neural Networks
Many state-of-art robotics applications require fast and efficient motion planning algorithms. Existing motion planning methods become less effective as the dimensionality of the robot and its workspace increases, especially the computational cost of collision detection routines. In this work, we pr...
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Zusammenfassung: | Many state-of-art robotics applications require fast and efficient motion
planning algorithms. Existing motion planning methods become less effective as
the dimensionality of the robot and its workspace increases, especially the
computational cost of collision detection routines. In this work, we present a
framework to address the cost of expensive primitive operations in
sampling-based motion planning. This framework determines the validity of a
sample robot configuration through a novel combination of a Contractive
AutoEncoder (CAE), which captures a occupancy grids representation of the
robot's workspace, and a Multilayer Perceptron, which efficiently predicts the
collision state of the robot from the CAE and the robot's configuration. We
evaluate our framework on multiple planning problems with a variety of robots
in 2D and 3D workspaces. The results show that (1) the framework is
computationally efficient in all investigated problems, and (2) the framework
generalizes well to new workspaces. |
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DOI: | 10.48550/arxiv.2006.16868 |