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DIPN: Deep Interaction Prediction Network with Application to Clutter Removal

Authors :
Huang, Baichuan
Han, Shuai D.
Boularias, Abdeslam
Yu, Jingjin
Publication Year :
2020

Abstract

We propose a Deep Interaction Prediction Network (DIPN) for learning to predict complex interactions that ensue as a robot end-effector pushes multiple objects, whose physical properties, including size, shape, mass, and friction coefficients may be unknown a priori. DIPN "imagines" the effect of a push action and generates an accurate synthetic image of the predicted outcome. DIPN is shown to be sample efficient when trained in simulation or with a real robotic system. The high accuracy of DIPN allows direct integration with a grasp network, yielding a robotic manipulation system capable of executing challenging clutter removal tasks while being trained in a fully self-supervised manner. The overall network demonstrates intelligent behavior in selecting proper actions between push and grasp for completing clutter removal tasks and significantly outperforms the previous state-of-the-art. Remarkably, DIPN achieves even better performance on the real robotic hardware system than in simulation. Videos, code, and experiments log are available at https://github.com/rutgers-arc-lab/dipn.<br />Comment: ICRA 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2011.04692
Document Type :
Working Paper