Teaching Robots to Grasp Like Humans: An Interactive Approach

10/09/2021
by   Anna Mészáros, et al.
0

This work investigates how the intricate task of grasping may be learned from humans based on demonstrations and corrections. Due to the complexity of the task, these demonstrations are often slow and even slightly flawed, particularly at moments when multiple aspects (i.e., end-effector movement, orientation, and gripper width) have to be demonstrated at once. Rather than training a person to provide better demonstrations, non-expert users are provided with the ability to interactively modify the dynamics of their initial demonstration through teleoperated corrective feedback. This in turn allows them to teach motions outside of their own physical capabilities. In the end, the goal is to obtain a faster but reliable execution of the task. The presented framework learns the desired movement dynamics based on the current Cartesian Position with Gaussian Processes (GP), resulting in a reactive, time-invariant policy. Using GPs also allows online interactive corrections and active disturbance rejection through epistemic uncertainty minimization. The experimental evaluation of the framework is carried out on a Franka-Emika Panda.

READ FULL TEXT

page 1

page 6

research
03/04/2021

ILoSA: Interactive Learning of Stiffness and Attractors

Teaching robots how to apply forces according to our preferences is stil...
research
03/17/2023

Remote Task-oriented Grasp Area Teaching By Non-Experts through Interactive Segmentation and Few-Shot Learning

A robot operating in unstructured environments must be able to discrimin...
research
06/29/2019

Active Learning of Probabilistic Movement Primitives

A Probabilistic Movement Primitive (ProMP) defines a distribution over t...
research
10/28/2022

Interactive Imitation Learning of Bimanual Movement Primitives

Performing bimanual tasks with dual robotic setups can drastically incre...
research
05/13/2019

Extending Policy from One-Shot Learning through Coaching

Humans generally teach their fellow collaborators to perform tasks throu...
research
08/10/2021

Recognizing Orientation Slip in Human Demonstrations

Manipulations of a constrained object often use a non-rigid grasp that a...
research
09/14/2022

TEAM: a parameter-free algorithm to teach collaborative robots motions from user demonstrations

Collaborative robots (cobots) built to work alongside humans must be abl...

Please sign up or login with your details

Forgot password? Click here to reset