Automatic Quality Control of Salmon - Using Machine Learning Algorithms based on Input from a 3D Machine Vision System

Quality control of Atlantic salmon is currently a task performed manually by human operators. To stay competitive in an increasingly global market, it becomes necessary to take advantage of technology to improve productivity and profitability. This is especially the case in countries with high salar...

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Bibliographic Details
Main Author: Sture, Øystein
Other Authors: Skavhaug, Amund, Mathiassen, John Reidar
Format: Master Thesis
Language:English
Published: NTNU 2015
Subjects:
Online Access:http://hdl.handle.net/11250/2352578
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spelling ftntnutrondheimi:oai:ntnuopen.ntnu.no:11250/2352578 2023-05-15T15:29:29+02:00 Automatic Quality Control of Salmon - Using Machine Learning Algorithms based on Input from a 3D Machine Vision System Sture, Øystein Skavhaug, Amund Mathiassen, John Reidar 2015 http://hdl.handle.net/11250/2352578 eng eng NTNU ntnudaim:12736 http://hdl.handle.net/11250/2352578 138 Kybernetikk og robotikk (2 årig) Master thesis 2015 ftntnutrondheimi 2019-09-17T06:51:06Z Quality control of Atlantic salmon is currently a task performed manually by human operators. To stay competitive in an increasingly global market, it becomes necessary to take advantage of technology to improve productivity and profitability. This is especially the case in countries with high salary levels. In this thesis, a complete machine vision system for 3D-imaging has been built and integrated for the purpose of quality control of Atlantic salmon. The system is build using off-the-shelf hardware, and has been integrated using no external proprietary tools. The software for the acquisition was implemented with real-time restrictions in mind. The end result is thus an affordable solution, which can be deployed in an industrial environment without major investments. An experiment was then performed on Atlantic salmon of different quality classes. The obtained data was used to develop descriptors that capture enough information to separate out lower classes of Atlantic salmon based on its appearance. The thesis focuses on two primary causes of downgraded salmon; deformities and wounds. Deformities appear due to skeletal deformations and inflammation. Wounds appear due to cuts and scrapes that are infected by bacteria. Using geometric features and color information, two classifiers was developed to handle each of these cases. The classifiers have been found to reliably detect deformities and wounds in Atlantic salmon, and shows that 3D-imaging has great potential within the field of automatic quality control of fish. Master Thesis Atlantic salmon NTNU Open Archive (Norwegian University of Science and Technology)
institution Open Polar
collection NTNU Open Archive (Norwegian University of Science and Technology)
op_collection_id ftntnutrondheimi
language English
topic Kybernetikk og robotikk (2 årig)
spellingShingle Kybernetikk og robotikk (2 årig)
Sture, Øystein
Automatic Quality Control of Salmon - Using Machine Learning Algorithms based on Input from a 3D Machine Vision System
topic_facet Kybernetikk og robotikk (2 årig)
description Quality control of Atlantic salmon is currently a task performed manually by human operators. To stay competitive in an increasingly global market, it becomes necessary to take advantage of technology to improve productivity and profitability. This is especially the case in countries with high salary levels. In this thesis, a complete machine vision system for 3D-imaging has been built and integrated for the purpose of quality control of Atlantic salmon. The system is build using off-the-shelf hardware, and has been integrated using no external proprietary tools. The software for the acquisition was implemented with real-time restrictions in mind. The end result is thus an affordable solution, which can be deployed in an industrial environment without major investments. An experiment was then performed on Atlantic salmon of different quality classes. The obtained data was used to develop descriptors that capture enough information to separate out lower classes of Atlantic salmon based on its appearance. The thesis focuses on two primary causes of downgraded salmon; deformities and wounds. Deformities appear due to skeletal deformations and inflammation. Wounds appear due to cuts and scrapes that are infected by bacteria. Using geometric features and color information, two classifiers was developed to handle each of these cases. The classifiers have been found to reliably detect deformities and wounds in Atlantic salmon, and shows that 3D-imaging has great potential within the field of automatic quality control of fish.
author2 Skavhaug, Amund
Mathiassen, John Reidar
format Master Thesis
author Sture, Øystein
author_facet Sture, Øystein
author_sort Sture, Øystein
title Automatic Quality Control of Salmon - Using Machine Learning Algorithms based on Input from a 3D Machine Vision System
title_short Automatic Quality Control of Salmon - Using Machine Learning Algorithms based on Input from a 3D Machine Vision System
title_full Automatic Quality Control of Salmon - Using Machine Learning Algorithms based on Input from a 3D Machine Vision System
title_fullStr Automatic Quality Control of Salmon - Using Machine Learning Algorithms based on Input from a 3D Machine Vision System
title_full_unstemmed Automatic Quality Control of Salmon - Using Machine Learning Algorithms based on Input from a 3D Machine Vision System
title_sort automatic quality control of salmon - using machine learning algorithms based on input from a 3d machine vision system
publisher NTNU
publishDate 2015
url http://hdl.handle.net/11250/2352578
genre Atlantic salmon
genre_facet Atlantic salmon
op_source 138
op_relation ntnudaim:12736
http://hdl.handle.net/11250/2352578
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