Sampling-Based Grasp and Collision Prediction for Assisted Teleoperation
By: Simon Manschitz , Berk Gueler , Wei Ma and more
Potential Business Impact:
Robot follows your commands, but fixes small mistakes.
Shared autonomy allows for combining the global planning capabilities of a human operator with the strengths of a robot such as repeatability and accurate control. In a real-time teleoperation setting, one possibility for shared autonomy is to let the human operator decide for the rough movement and to let the robot do fine adjustments, e.g., when the view of the operator is occluded. We present a learning-based concept for shared autonomy that aims at supporting the human operator in a real-time teleoperation setting. At every step, our system tracks the target pose set by the human operator as accurately as possible while at the same time satisfying a set of constraints which influence the robot's behavior. An important characteristic is that the constraints can be dynamically activated and deactivated which allows the system to provide task-specific assistance. Since the system must generate robot commands in real-time, solving an optimization problem in every iteration is not feasible. Instead, we sample potential target configurations and use Neural Networks for predicting the constraint costs for each configuration. By evaluating each configuration in parallel, our system is able to select the target configuration which satisfies the constraints and has the minimum distance to the operator's target pose with minimal delay. We evaluate the framework with a pick and place task on a bi-manual setup with two Franka Emika Panda robot arms with Robotiq grippers.
Similar Papers
Human-Centered Shared Autonomy for Motor Planning, Learning, and Control Applications
Human-Computer Interaction
Helps robots and people work together better.
HARMONI: Haptic-Guided Assistance for Unified Robotic Tele-Manipulation and Tele-Navigation
Robotics
Robots help people do tricky jobs better.
A Vision-Based Shared-Control Teleoperation Scheme for Controlling the Robotic Arm of a Four-Legged Robot
Robotics
Control robot arms with your own arm's movements.