An Outlier Robust Filter for Maritime Robotics Applications

Navigation systems of autonomous vehicles often exploit range measurement information that may be affected by outliers. In marine application the presence of outliers in sonar bathymetry, for instance, can be particularly severe due to multipath phenomena in the acoustic propagation. This paper desc...

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Bibliographic Details
Main Author: Indiveri Giovanni
Format: Article
Language:English
Published: De Gruyter 2013-12-01
Series:Paladyn: Journal of Behavioral Robotics
Subjects:
Online Access:https://doi.org/10.2478/pjbr-2013-0012
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spelling doaj-4f331a47451542e9b6408f8e6598bd902021-10-02T19:25:19ZengDe GruyterPaladyn: Journal of Behavioral Robotics2081-48362013-12-014419620310.2478/pjbr-2013-0012An Outlier Robust Filter for Maritime Robotics ApplicationsIndiveri Giovanni0Dip. Ing. Innovazione Università del Salento, ISME node, via Monteroni, 73100 Lecce, ItalyNavigation systems of autonomous vehicles often exploit range measurement information that may be affected by outliers. In marine application the presence of outliers in sonar bathymetry, for instance, can be particularly severe due to multipath phenomena in the acoustic propagation. This paper describes a possible approach to process range measurements highly contaminated by outliers. The proposed solution builds on a robust parameter identification algorithm minimizing a nonlinear cost function that exploits the mathematical properties of Gibbs entropy. Numerical examples on simulated data are provided to illustrate the method and its performance. The use of simulated data allows to vary the amount of noise and outliers contamination while knowing the ground truth values of the parameters to be identified. For the sake of experimental validation, the method is also applied to third party (publicly available) upward looking sonar ice draft data collected by submarines in the Arctic Ocean.https://doi.org/10.2478/pjbr-2013-0012marine robotics least-squares identification signal processing parameter estimation identification algorithms robust estimation
collection DOAJ
language English
format Article
sources DOAJ
author Indiveri Giovanni
spellingShingle Indiveri Giovanni
An Outlier Robust Filter for Maritime Robotics Applications
Paladyn: Journal of Behavioral Robotics
marine robotics
least-squares identification
signal processing
parameter estimation
identification algorithms
robust estimation
author_facet Indiveri Giovanni
author_sort Indiveri Giovanni
title An Outlier Robust Filter for Maritime Robotics Applications
title_short An Outlier Robust Filter for Maritime Robotics Applications
title_full An Outlier Robust Filter for Maritime Robotics Applications
title_fullStr An Outlier Robust Filter for Maritime Robotics Applications
title_full_unstemmed An Outlier Robust Filter for Maritime Robotics Applications
title_sort outlier robust filter for maritime robotics applications
publisher De Gruyter
series Paladyn: Journal of Behavioral Robotics
issn 2081-4836
publishDate 2013-12-01
description Navigation systems of autonomous vehicles often exploit range measurement information that may be affected by outliers. In marine application the presence of outliers in sonar bathymetry, for instance, can be particularly severe due to multipath phenomena in the acoustic propagation. This paper describes a possible approach to process range measurements highly contaminated by outliers. The proposed solution builds on a robust parameter identification algorithm minimizing a nonlinear cost function that exploits the mathematical properties of Gibbs entropy. Numerical examples on simulated data are provided to illustrate the method and its performance. The use of simulated data allows to vary the amount of noise and outliers contamination while knowing the ground truth values of the parameters to be identified. For the sake of experimental validation, the method is also applied to third party (publicly available) upward looking sonar ice draft data collected by submarines in the Arctic Ocean.
topic marine robotics
least-squares identification
signal processing
parameter estimation
identification algorithms
robust estimation
url https://doi.org/10.2478/pjbr-2013-0012
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