Learning to Grasp from a Single Demonstration

06/09/2018
by   Pieter Van Molle, et al.
0

Learning-based approaches for robotic grasping using visual sensors typically require collecting a large size dataset, either manually labeled or by many trial and errors of a robotic manipulator in the real or simulated world. We propose a simpler learning-from-demonstration approach that is able to detect the object to grasp from merely a single demonstration using a convolutional neural network we call GraspNet. In order to increase robustness and decrease the training time even further, we leverage data from previous demonstrations to quickly fine-tune a GrapNet for each new demonstration. We present some preliminary results on a grasping experiment with the Franka Panda cobot for which we can train a GraspNet with only hundreds of train iterations.

READ FULL TEXT

page 3

page 4

research
11/14/2022

Multi-Finger Grasping Like Humans

Robots with multi-fingered grippers could perform advanced manipulation ...
research
12/31/2018

A dataset of 40K naturalistic 6-degree-of-freedom robotic grasp demonstrations

Modern approaches to grasp planning often involve deep learning. However...
research
09/10/2019

Learning Actions from Human Demonstration Video for Robotic Manipulation

Learning actions from human demonstration is an emerging trend for desig...
research
03/04/2019

Improving Task-Parameterised Movement Learning Generalisation with Frame-Weighted Trajectory Generation

Learning from Demonstration depends on a robot learner generalising its ...
research
09/04/2019

Towards Precise Robotic Grasping by Probabilistic Post-grasp Displacement Estimation

Precise robotic grasping is important for many industrial applications, ...
research
09/16/2023

Learning a Stable Dynamic System with a Lyapunov Energy Function for Demonstratives Using Neural Networks

Autonomous Dynamic System (DS)-based algorithms hold a pivotal and found...
research
06/27/2019

Generative grasp synthesis from demonstration using parametric mixtures

We present a parametric formulation for learning generative models for g...

Please sign up or login with your details

Forgot password? Click here to reset