This work describes the exploitation of a Remotely Operated Vehicle (ROV), equipped with a multi-parametric sensors package (acoustic and video), for the exploration and characterisation of sea-bottoms covered with Posidonia oceanica seagrass, which represents a valuable indicator of the environmental health. The data collection is achieved by the employment of a single beam echosounder and a down-looking underwater camera. An acoustic data procedural analysis based on machine learning methods was developed to automatically detect the Posidonia presence, so that in future works it will be possible to operate also in low-visibility conditions, using only the acoustic sensors. Data acquisition was carried out over different seafloor types in coastal area near Biograd Na Moru (Croatia) and the preliminary results are reported in the paper.

Machine learning methods for acoustic-based automatic Posidonia meadows detection by means of unmanned marine vehicles

Ferretti Roberta;Bibuli Marco;Caccia Massimo;Chiarella Davide;Odetti Angelo;Ranieri Andrea;Zereik Enrica;Bruzzone Gabriele
2017

Abstract

This work describes the exploitation of a Remotely Operated Vehicle (ROV), equipped with a multi-parametric sensors package (acoustic and video), for the exploration and characterisation of sea-bottoms covered with Posidonia oceanica seagrass, which represents a valuable indicator of the environmental health. The data collection is achieved by the employment of a single beam echosounder and a down-looking underwater camera. An acoustic data procedural analysis based on machine learning methods was developed to automatically detect the Posidonia presence, so that in future works it will be possible to operate also in low-visibility conditions, using only the acoustic sensors. Data acquisition was carried out over different seafloor types in coastal area near Biograd Na Moru (Croatia) and the preliminary results are reported in the paper.
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dc.authority.people Bibuli Marco it
dc.authority.people Caccia Massimo it
dc.authority.people Chiarella Davide it
dc.authority.people Odetti Angelo it
dc.authority.people Ranieri Andrea it
dc.authority.people Zereik Enrica it
dc.authority.people Bruzzone Gabriele it
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dc.date.issued 2017 -
dc.description.abstracteng This work describes the exploitation of a Remotely Operated Vehicle (ROV), equipped with a multi-parametric sensors package (acoustic and video), for the exploration and characterisation of sea-bottoms covered with Posidonia oceanica seagrass, which represents a valuable indicator of the environmental health. The data collection is achieved by the employment of a single beam echosounder and a down-looking underwater camera. An acoustic data procedural analysis based on machine learning methods was developed to automatically detect the Posidonia presence, so that in future works it will be possible to operate also in low-visibility conditions, using only the acoustic sensors. Data acquisition was carried out over different seafloor types in coastal area near Biograd Na Moru (Croatia) and the preliminary results are reported in the paper. -
dc.description.affiliations Consiglio Nazionale delle Ricerche - Istituto di Studi sui Sistemi Intelligenti per l'Automazione Via De Marini 6 - 16149, Genova, Italy -
dc.description.allpeople Ferretti, Roberta; Bibuli, Marco; Caccia, Massimo; Chiarella, Davide; Odetti, Angelo; Ranieri, Andrea; Zereik, Enrica; Bruzzone, Gabriele -
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dc.subject.keywords Machine Learning -
dc.subject.keywords Posidonia Detection -
dc.subject.keywords unmanned marine vehicles -
dc.subject.singlekeyword Machine Learning *
dc.subject.singlekeyword Posidonia Detection *
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dc.title Machine learning methods for acoustic-based automatic Posidonia meadows detection by means of unmanned marine vehicles en
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