Quality Diversity under Sparse Reward and Sparse Interaction: Application to Grasping in Robotics

08/10/2023
by   J. Huber, et al.
0

Quality-Diversity (QD) methods are algorithms that aim to generate a set of diverse and high-performing solutions to a given problem. Originally developed for evolutionary robotics, most QD studies are conducted on a limited set of domains - mainly applied to locomotion, where the fitness and the behavior signal are dense. Grasping is a crucial task for manipulation in robotics. Despite the efforts of many research communities, this task is yet to be solved. Grasping cumulates unprecedented challenges in QD literature: it suffers from reward sparsity, behavioral sparsity, and behavior space misalignment. The present work studies how QD can address grasping. Experiments have been conducted on 15 different methods on 10 grasping domains, corresponding to 2 different robot-gripper setups and 5 standard objects. An evaluation framework that distinguishes the evaluation of an algorithm from its internal components has also been proposed for a fair comparison. The obtained results show that MAP-Elites variants that select successful solutions in priority outperform all the compared methods on the studied metrics by a large margin. We also found experimental evidence that sparse interaction can lead to deceptive novelty. To our knowledge, the ability to efficiently produce examples of grasping trajectories demonstrated in this work has no precedent in the literature.

READ FULL TEXT

page 14

page 21

page 24

page 26

research
10/14/2022

E2R: a Hierarchical-Learning inspired Novelty-Search method to generate diverse repertoires of grasping trajectories

Robotics grasping refers to the task of making a robotic system pick an ...
research
01/03/2019

From exploration to control: learning object manipulation skills through novelty search and local adaptation

Programming a robot to deal with open-ended tasks remains a challenge, i...
research
08/22/2023

Vision-Based Intelligent Robot Grasping Using Sparse Neural Network

In the modern era of Deep Learning, network parameters play a vital role...
research
06/28/2022

Dext-Gen: Dexterous Grasping in Sparse Reward Environments with Full Orientation Control

Reinforcement learning is a promising method for robotic grasping as it ...
research
03/05/2023

Two-Stage Grasping: A New Bin Picking Framework for Small Objects

This paper proposes a novel bin picking framework, two-stage grasping, a...
research
05/17/2022

Automatic Acquisition of a Repertoire of Diverse Grasping Trajectories through Behavior Shaping and Novelty Search

Grasping a particular object may require a dedicated grasping movement t...
research
09/19/2020

Design and Development of a Gecko-Adhesive Gripper for the Astrobee Free-Flying Robot

Assistive free-flying robots are a promising platform for supporting and...

Please sign up or login with your details

Forgot password? Click here to reset