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Bibliographic Details
Main Authors: Gao, Wei, Ai, Bo, Loo, Joel, Vinay, Hsu, David
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.03122
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author Gao, Wei
Ai, Bo
Loo, Joel
Vinay
Hsu, David
author_facet Gao, Wei
Ai, Bo
Loo, Joel
Vinay
Hsu, David
contents This work explores the challenges of creating a scalable and robust robot navigation system that can traverse both indoor and outdoor environments to reach distant goals. We propose a navigation system architecture called IntentionNet that employs a monolithic neural network as the low-level planner/controller, and uses a general interface that we call intentions to steer the controller. The paper proposes two types of intentions, Local Path and Environment (LPE) and Discretised Local Move (DLM), and shows that DLM is robust to significant metric positioning and mapping errors. The paper also presents Kilo-IntentionNet, an instance of the IntentionNet system using the DLM intention that is deployed on a Boston Dynamics Spot robot, and which successfully navigates through complex indoor and outdoor environments over distances of up to a kilometre with only noisy odometry.
format Preprint
id arxiv_https___arxiv_org_abs_2407_03122
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle IntentionNet: Map-Lite Visual Navigation at the Kilometre Scale
Gao, Wei
Ai, Bo
Loo, Joel
Vinay
Hsu, David
Robotics
This work explores the challenges of creating a scalable and robust robot navigation system that can traverse both indoor and outdoor environments to reach distant goals. We propose a navigation system architecture called IntentionNet that employs a monolithic neural network as the low-level planner/controller, and uses a general interface that we call intentions to steer the controller. The paper proposes two types of intentions, Local Path and Environment (LPE) and Discretised Local Move (DLM), and shows that DLM is robust to significant metric positioning and mapping errors. The paper also presents Kilo-IntentionNet, an instance of the IntentionNet system using the DLM intention that is deployed on a Boston Dynamics Spot robot, and which successfully navigates through complex indoor and outdoor environments over distances of up to a kilometre with only noisy odometry.
title IntentionNet: Map-Lite Visual Navigation at the Kilometre Scale
topic Robotics
url https://arxiv.org/abs/2407.03122