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Auteurs principaux: Bhatt, Maulik, Zhen, HongHao, Kennedy III, Monroe, Mehr, Negar
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2410.05547
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author Bhatt, Maulik
Zhen, HongHao
Kennedy III, Monroe
Mehr, Negar
author_facet Bhatt, Maulik
Zhen, HongHao
Kennedy III, Monroe
Mehr, Negar
contents When working around other agents such as humans, it is important to model their perception capabilities to predict and make sense of their behavior. In this work, we consider agents whose perception capabilities are determined by their limited field of view, viewing range, and the potential to miss objects within their viewing range. By considering the perception capabilities and observation model of agents independently from their motion policy, we show that we can better predict the agents' behavior; i.e., by reasoning about the perception capabilities of other agents, one can better make sense of their actions. We perform a user study where human operators navigate a cluttered scene while scanning the region for obstacles with a limited field of view and range. We show that by reasoning about the limited observation space of humans, a robot can better learn a human's strategy for navigating an environment and navigate with minimal collision with dynamic and static obstacles. We also show that this learned model helps it successfully navigate a physical hardware vehicle in real-time. Code available at https://github.com/labicon/HRMotion-RestrictedView.
format Preprint
id arxiv_https___arxiv_org_abs_2410_05547
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Understanding and Imitating Human-Robot Motion with Restricted Visual Fields
Bhatt, Maulik
Zhen, HongHao
Kennedy III, Monroe
Mehr, Negar
Robotics
When working around other agents such as humans, it is important to model their perception capabilities to predict and make sense of their behavior. In this work, we consider agents whose perception capabilities are determined by their limited field of view, viewing range, and the potential to miss objects within their viewing range. By considering the perception capabilities and observation model of agents independently from their motion policy, we show that we can better predict the agents' behavior; i.e., by reasoning about the perception capabilities of other agents, one can better make sense of their actions. We perform a user study where human operators navigate a cluttered scene while scanning the region for obstacles with a limited field of view and range. We show that by reasoning about the limited observation space of humans, a robot can better learn a human's strategy for navigating an environment and navigate with minimal collision with dynamic and static obstacles. We also show that this learned model helps it successfully navigate a physical hardware vehicle in real-time. Code available at https://github.com/labicon/HRMotion-RestrictedView.
title Understanding and Imitating Human-Robot Motion with Restricted Visual Fields
topic Robotics
url https://arxiv.org/abs/2410.05547