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Main Authors: Cuan, Catie, Jeffrey, Kyle, Kleiven, Kim, Li, Adrian, Fisher, Emre, Harrison, Matt, Holson, Benjie, Okamura, Allison, Bennice, Matt
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.00442
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author Cuan, Catie
Jeffrey, Kyle
Kleiven, Kim
Li, Adrian
Fisher, Emre
Harrison, Matt
Holson, Benjie
Okamura, Allison
Bennice, Matt
author_facet Cuan, Catie
Jeffrey, Kyle
Kleiven, Kim
Li, Adrian
Fisher, Emre
Harrison, Matt
Holson, Benjie
Okamura, Allison
Bennice, Matt
contents For decades, robotics researchers have pursued various tasks for multi-robot systems, from cooperative manipulation to search and rescue. These tasks are multi-robot extensions of classical robotic tasks and often optimized on dimensions such as speed or efficiency. As robots transition from commercial and research settings into everyday environments, social task aims such as engagement or entertainment become increasingly relevant. This work presents a compelling multi-robot task, in which the main aim is to enthrall and interest. In this task, the goal is for a human to be drawn to move alongside and participate in a dynamic, expressive robot flock. Towards this aim, the research team created algorithms for robot movements and engaging interaction modes such as gestures and sound. The contributions are as follows: (1) a novel group navigation algorithm involving human and robot agents, (2) a gesture responsive algorithm for real-time, human-robot flocking interaction, (3) a weight mode characterization system for modifying flocking behavior, and (4) a method of encoding a choreographer's preferences inside a dynamic, adaptive, learned system. An experiment was performed to understand individual human behavior while interacting with the flock under three conditions: weight modes selected by a human choreographer, a learned model, or subset list. Results from the experiment showed that the perception of the experience was not influenced by the weight mode selection. This work elucidates how differing task aims such as engagement manifest in multi-robot system design and execution, and broadens the domain of multi-robot tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2404_00442
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Interactive Multi-Robot Flocking with Gesture Responsiveness and Musical Accompaniment
Cuan, Catie
Jeffrey, Kyle
Kleiven, Kim
Li, Adrian
Fisher, Emre
Harrison, Matt
Holson, Benjie
Okamura, Allison
Bennice, Matt
Robotics
Artificial Intelligence
Human-Computer Interaction
For decades, robotics researchers have pursued various tasks for multi-robot systems, from cooperative manipulation to search and rescue. These tasks are multi-robot extensions of classical robotic tasks and often optimized on dimensions such as speed or efficiency. As robots transition from commercial and research settings into everyday environments, social task aims such as engagement or entertainment become increasingly relevant. This work presents a compelling multi-robot task, in which the main aim is to enthrall and interest. In this task, the goal is for a human to be drawn to move alongside and participate in a dynamic, expressive robot flock. Towards this aim, the research team created algorithms for robot movements and engaging interaction modes such as gestures and sound. The contributions are as follows: (1) a novel group navigation algorithm involving human and robot agents, (2) a gesture responsive algorithm for real-time, human-robot flocking interaction, (3) a weight mode characterization system for modifying flocking behavior, and (4) a method of encoding a choreographer's preferences inside a dynamic, adaptive, learned system. An experiment was performed to understand individual human behavior while interacting with the flock under three conditions: weight modes selected by a human choreographer, a learned model, or subset list. Results from the experiment showed that the perception of the experience was not influenced by the weight mode selection. This work elucidates how differing task aims such as engagement manifest in multi-robot system design and execution, and broadens the domain of multi-robot tasks.
title Interactive Multi-Robot Flocking with Gesture Responsiveness and Musical Accompaniment
topic Robotics
Artificial Intelligence
Human-Computer Interaction
url https://arxiv.org/abs/2404.00442