To main content

Grasping virtual fish: A step towards deep learning from demonstration in virtual reality

Grasping virtual fish: A step towards deep learning from demonstration in virtual reality

Category
Journal publication
Abstract
We present an approach to robotic deep learning from demonstration in virtual reality, which combines a deep 3D convolutional neural network, for grasp detection from 3D point clouds, with domain randomization to generate a large training data set. The use of virtual reality (VR) enables robot learning from demonstration in a virtual environment. In this environment, a human user can easily and intuitively demonstrate examples of how to grasp an object, such as a fish. From a few dozen of these demonstrations, we use domain randomization to generate a large synthetic training data set consisting of 76 000 example grasps of fish. After training the network using this data set, the network is able to guide a gripper to grasp virtual fish with good success rates. Our domain randomization approach is a step towards an efficient way to perform robotic deep learning from demonstration in virtual reality.
Client
  • Norges forskningsråd / 262900
Language
English
Affiliation
  • SINTEF Ocean / Sjømatteknologi
Year
2018
Published in
Robotics and Biomimetics
ISSN
2197-3768