Learning a visuomotor controller for real world robotic grasping using simulated depth images

June 14, 2017 ยท Declared Dead ยท ๐Ÿ› Conference on Robot Learning

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Authors Ulrich Viereck, Andreas ten Pas, Kate Saenko, Robert Platt arXiv ID 1706.04652 Category cs.RO: Robotics Cross-listed cs.AI Citations 194 Venue Conference on Robot Learning Last Checked 3 months ago
Abstract
We want to build robots that are useful in unstructured real world applications, such as doing work in the household. Grasping in particular is an important skill in this domain, yet it remains a challenge. One of the key hurdles is handling unexpected changes or motion in the objects being grasped and kinematic noise or other errors in the robot. This paper proposes an approach to learning a closed-loop controller for robotic grasping that dynamically guides the gripper to the object. We use a wrist-mounted sensor to acquire depth images in front of the gripper and train a convolutional neural network to learn a distance function to true grasps for grasp configurations over an image. The training sensor data is generated in simulation, a major advantage over previous work that uses real robot experience, which is costly to obtain. Despite being trained in simulation, our approach works well on real noisy sensor images. We compare our controller in simulated and real robot experiments to a strong baseline for grasp pose detection, and find that our approach significantly outperforms the baseline in the presence of kinematic noise, perceptual errors and disturbances of the object during grasping.
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