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Autori principali: McGann, Daniel, Lassak, Kyle, Kaess, Michael
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2310.12320
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author McGann, Daniel
Lassak, Kyle
Kaess, Michael
author_facet McGann, Daniel
Lassak, Kyle
Kaess, Michael
contents In this paper we present a fully distributed, asynchronous, and general purpose optimization algorithm for Consensus Simultaneous Localization and Mapping (CSLAM). Multi-robot teams require that agents have timely and accurate solutions to their state as well as the states of the other robots in the team. To optimize this solution we develop a CSLAM back-end based on Consensus ADMM called MESA (Manifold, Edge-based, Separable ADMM). MESA is fully distributed to tolerate failures of individual robots, asynchronous to tolerate communication delays and outages, and general purpose to handle any CSLAM problem formulation. We demonstrate that MESA exhibits superior convergence rates and accuracy compare to existing state-of-the art CSLAM back-end optimizers.
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institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Asynchronous Distributed Smoothing and Mapping via On-Manifold Consensus ADMM
McGann, Daniel
Lassak, Kyle
Kaess, Michael
Robotics
In this paper we present a fully distributed, asynchronous, and general purpose optimization algorithm for Consensus Simultaneous Localization and Mapping (CSLAM). Multi-robot teams require that agents have timely and accurate solutions to their state as well as the states of the other robots in the team. To optimize this solution we develop a CSLAM back-end based on Consensus ADMM called MESA (Manifold, Edge-based, Separable ADMM). MESA is fully distributed to tolerate failures of individual robots, asynchronous to tolerate communication delays and outages, and general purpose to handle any CSLAM problem formulation. We demonstrate that MESA exhibits superior convergence rates and accuracy compare to existing state-of-the art CSLAM back-end optimizers.
title Asynchronous Distributed Smoothing and Mapping via On-Manifold Consensus ADMM
topic Robotics
url https://arxiv.org/abs/2310.12320