Fish detection automation from ARIS and DIDSON SONAR data

Abstract. The goal of this thesis is to analyse SONAR files produced by ARIS and DIDSON manufactured by Sound Metrics Co. which are ultrasonic, monostatic and multibeam echo-sounders. They are used to capture the behaviour of Atlantic salmon, which recently has been on the lists of endangered specie...

Full description

Bibliographic Details
Main Author: Ghobrial, M. (Mina)
Format: Master Thesis
Language:English
Published: University of Oulu 2019
Subjects:
Online Access:http://jultika.oulu.fi/Record/nbnfioulu-201906262667
id ftunivoulu:oai:oulu.fi:nbnfioulu-201906262667
record_format openpolar
spelling ftunivoulu:oai:oulu.fi:nbnfioulu-201906262667 2023-07-30T04:02:24+02:00 Fish detection automation from ARIS and DIDSON SONAR data Ghobrial, M. (Mina) 2019-06-25 application/pdf http://jultika.oulu.fi/Record/nbnfioulu-201906262667 eng eng University of Oulu info:eu-repo/semantics/openAccess © Mina Ghobrial, 2019 info:eu-repo/semantics/masterThesis info:eu-repo/semantics/publishedVersion 2019 ftunivoulu 2023-07-08T19:56:12Z Abstract. The goal of this thesis is to analyse SONAR files produced by ARIS and DIDSON manufactured by Sound Metrics Co. which are ultrasonic, monostatic and multibeam echo-sounders. They are used to capture the behaviour of Atlantic salmon, which recently has been on the lists of endangered species. These SONARs can work in dark lighting conditions and provide high resolution images due to their high frequencies that ranges from 1.1 MHz to 1.8 MHz. The thesis goes through extracting data from file, redrawing it, and visualising it in human friendly format. Next, images are analysed to search for fish. Results of analysis are saved in formats such as JSON, to allow harmony with other legacy systems. Also the output helps in future development due to the support for JSON in multitude of programming languages. Eventually, a user-friendly user interface is introduced, which helps making the process easier. The software is tested against data-sets from rivers in Finland, that are rich in Atlantic salmon. Master Thesis Atlantic salmon Jultika - University of Oulu repository Aris ENVELOPE(-61.400,-61.400,-70.633,-70.633)
institution Open Polar
collection Jultika - University of Oulu repository
op_collection_id ftunivoulu
language English
description Abstract. The goal of this thesis is to analyse SONAR files produced by ARIS and DIDSON manufactured by Sound Metrics Co. which are ultrasonic, monostatic and multibeam echo-sounders. They are used to capture the behaviour of Atlantic salmon, which recently has been on the lists of endangered species. These SONARs can work in dark lighting conditions and provide high resolution images due to their high frequencies that ranges from 1.1 MHz to 1.8 MHz. The thesis goes through extracting data from file, redrawing it, and visualising it in human friendly format. Next, images are analysed to search for fish. Results of analysis are saved in formats such as JSON, to allow harmony with other legacy systems. Also the output helps in future development due to the support for JSON in multitude of programming languages. Eventually, a user-friendly user interface is introduced, which helps making the process easier. The software is tested against data-sets from rivers in Finland, that are rich in Atlantic salmon.
format Master Thesis
author Ghobrial, M. (Mina)
spellingShingle Ghobrial, M. (Mina)
Fish detection automation from ARIS and DIDSON SONAR data
author_facet Ghobrial, M. (Mina)
author_sort Ghobrial, M. (Mina)
title Fish detection automation from ARIS and DIDSON SONAR data
title_short Fish detection automation from ARIS and DIDSON SONAR data
title_full Fish detection automation from ARIS and DIDSON SONAR data
title_fullStr Fish detection automation from ARIS and DIDSON SONAR data
title_full_unstemmed Fish detection automation from ARIS and DIDSON SONAR data
title_sort fish detection automation from aris and didson sonar data
publisher University of Oulu
publishDate 2019
url http://jultika.oulu.fi/Record/nbnfioulu-201906262667
long_lat ENVELOPE(-61.400,-61.400,-70.633,-70.633)
geographic Aris
geographic_facet Aris
genre Atlantic salmon
genre_facet Atlantic salmon
op_rights info:eu-repo/semantics/openAccess
© Mina Ghobrial, 2019
_version_ 1772813191098662912