Learning visuomotor policies in simulation is much safer and cheaper than in the real world. However, due to discrepancies between the simulated and real data, simulator-trained policies often fail when transferred to real robots. One common approach to bridge the visual sim-to-real domain gap is domain randomization (DR). While previous work mainly evaluates DR for disembodied tasks, such as pose estimation and object detection, here we systematically explore visual domain randomization methods and benchmark them on a rich set of challenging robotic manipulation tasks. In particular, we propose an off-line proxy task of cube localization to select DR parameters for texture randomization, lighting randomization, variations of object colors ...
End-to-end control for robot manipulation and grasping is emerging as an attractive alternative to t...
Various approaches have been proposed to learn visuo-motor policies for real-world robotic applicati...
Thesis (Ph.D.)--University of Washington, 2019Robots should understand both semantics and physics in...
Learning visuomotor policies in simulation is much safer and cheaper than in the real world. However...
Domain randomisation is a very popular methodfor visual sim-to-real transfer in robotics, due to its...
International audienceVision and learning have made significant progress that could improve robotics...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
The ability to mentally evaluate variations of the future may well be the key to intelligence. Combi...
Physics simulators have shown great promise for conveniently learning reinforcement learning polici...
The rise of deep learning has caused a paradigm shift in robotics research, favoring methods that r...
Deep reinforcement learning has the potential to train robots to perform complex tasks in the real w...
The past decade has witnessed enormous progress in reinforcement learning, with intelligent agents l...
Visual navigation is essential for many applications in robotics, from manipulation, through mobile ...
International audienceDespite the recent successes of deep reinforcement learning, teaching complex ...
Simulation to Real-World Transfer allows affordable and fast training of learning-based robots for m...
End-to-end control for robot manipulation and grasping is emerging as an attractive alternative to t...
Various approaches have been proposed to learn visuo-motor policies for real-world robotic applicati...
Thesis (Ph.D.)--University of Washington, 2019Robots should understand both semantics and physics in...
Learning visuomotor policies in simulation is much safer and cheaper than in the real world. However...
Domain randomisation is a very popular methodfor visual sim-to-real transfer in robotics, due to its...
International audienceVision and learning have made significant progress that could improve robotics...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
The ability to mentally evaluate variations of the future may well be the key to intelligence. Combi...
Physics simulators have shown great promise for conveniently learning reinforcement learning polici...
The rise of deep learning has caused a paradigm shift in robotics research, favoring methods that r...
Deep reinforcement learning has the potential to train robots to perform complex tasks in the real w...
The past decade has witnessed enormous progress in reinforcement learning, with intelligent agents l...
Visual navigation is essential for many applications in robotics, from manipulation, through mobile ...
International audienceDespite the recent successes of deep reinforcement learning, teaching complex ...
Simulation to Real-World Transfer allows affordable and fast training of learning-based robots for m...
End-to-end control for robot manipulation and grasping is emerging as an attractive alternative to t...
Various approaches have been proposed to learn visuo-motor policies for real-world robotic applicati...
Thesis (Ph.D.)--University of Washington, 2019Robots should understand both semantics and physics in...