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Bibliographic Details
Main Authors: Mezey, David, Bastien, Renaud, Zheng, Yating, McKee, Neal, Stoll, David, Hamann, Heiko, Romanczuk, Pawel
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.17106
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author Mezey, David
Bastien, Renaud
Zheng, Yating
McKee, Neal
Stoll, David
Hamann, Heiko
Romanczuk, Pawel
author_facet Mezey, David
Bastien, Renaud
Zheng, Yating
McKee, Neal
Stoll, David
Hamann, Heiko
Romanczuk, Pawel
contents Collective movement inspired by animal groups promises inherited benefits for robot swarms, such as enhanced sensing and efficiency. However, while animals move in groups using only their local senses, robots often obey central control or use direct communication, introducing systemic weaknesses to the swarm. In the hope of addressing such vulnerabilities, developing bio-inspired decentralized swarms has been a major focus in recent decades. Yet, creating robots that move efficiently together using only local sensory information remains an extraordinary challenge. In this work, we present a decentralized, purely vision-based swarm of terrestrial robots. Within this novel framework robots achieve collisionless, polarized motion exclusively through minimal visual interactions, computing everything on board based on their individual camera streams, making central processing or direct communication obsolete. With agent-based simulations, we further show that using this model, even with a strictly limited field of view and within confined spaces, ordered group motion can emerge, while also highlighting key limitations. Our results offer a multitude of practical applications from hybrid societies coordinating collective movement without any common communication protocol, to advanced, decentralized vision-based robot swarms capable of diverse tasks in ever-changing environments.
format Preprint
id arxiv_https___arxiv_org_abs_2406_17106
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Purely vision-based collective movement of robots
Mezey, David
Bastien, Renaud
Zheng, Yating
McKee, Neal
Stoll, David
Hamann, Heiko
Romanczuk, Pawel
Robotics
Collective movement inspired by animal groups promises inherited benefits for robot swarms, such as enhanced sensing and efficiency. However, while animals move in groups using only their local senses, robots often obey central control or use direct communication, introducing systemic weaknesses to the swarm. In the hope of addressing such vulnerabilities, developing bio-inspired decentralized swarms has been a major focus in recent decades. Yet, creating robots that move efficiently together using only local sensory information remains an extraordinary challenge. In this work, we present a decentralized, purely vision-based swarm of terrestrial robots. Within this novel framework robots achieve collisionless, polarized motion exclusively through minimal visual interactions, computing everything on board based on their individual camera streams, making central processing or direct communication obsolete. With agent-based simulations, we further show that using this model, even with a strictly limited field of view and within confined spaces, ordered group motion can emerge, while also highlighting key limitations. Our results offer a multitude of practical applications from hybrid societies coordinating collective movement without any common communication protocol, to advanced, decentralized vision-based robot swarms capable of diverse tasks in ever-changing environments.
title Purely vision-based collective movement of robots
topic Robotics
url https://arxiv.org/abs/2406.17106