Please use this identifier to cite or link to this item: http://hdl.handle.net/11667/241
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dc.contributorBurke, Meredith-
dc.contributor.otherInnovate UKen_GB
dc.coverage.spatialOuter Hebrides, Scotlanden_GB
dc.coverage.temporal01/04/2023-31/10/2023en_GB
dc.creatorBurke, Meredith-
dc.creatorRey Planellas, Sonia-
dc.date.accessioned2024-12-11T15:55:11Z-
dc.date.created2023-04-01-
dc.identifier.urihttp://hdl.handle.net/11667/241-
dc.description.abstractAs the aquaculture industry is growing, more sophisticated technology is required to monitor farms and ensure sustainability and good fish welfare, in line with the precision livestock farming concept. Using behaviour as a non-invasive form of monitoring, in combination with artificial intelligence and machine learning, can allow for higher control over farm management. The goal of this study was to use a novel machine learning algorithm to quantify and assess changes to farmed Atlantic salmon (Salmo salar) behaviour related to fish health and welfare status. Main behaviours recorded were shoal-like cohesion, feeding, swimming activity and fish distribution in the cage. Video cameras were deployed within all cages in two Scottish Atlantic salmon marine farms. Furthermore, one cage in each farm was equipped with additional cameras (5 and 4 for site 1 and 2, respectively), for higher spatial coverage of fish behaviour and distribution throughout the cage. The algorithm processed video footage from these cameras and outputted behavioural data termed ‘activity’, which encompasses fish abundance, speed, and shoal cohesion. This dataset includes this activity data along with the date/time, depth of the camera, and temperature at the camera's location.en_GB
dc.description.tableofcontentsFiles are divided by date and also by farm site (farm A and B) and sea cage. One cage at each site had multiple cameras as well. Farm A's study cage (with multiple cameras) starts with 257_, then the camera number (001-005), then date. Farm B's study cage starts with 258_, then camera number (001,003,004,005) - no camera 2, then date. The other cages at both sites have 1 camera, and they are labelled as Farm A = 315_camera#, Farm B = 389_camera#.en_GB
dc.language.isoengen_GB
dc.publisherUniversity of Stirlingen_GB
dc.relationBurke, M; Rey Planellas, S (2025): Atlantic salmon activity data derived from AI algorithm at commercial aquaculture farm. University of Stirling. Dataset. http://hdl.handle.net/11667/241en_GB
dc.relation.isreferencedbyPrecision Farming in Aquaculture: Use of a non-invasive, AI-powered real-time automated behavioural monitoring approach to predict gill health and improve welfare in Atlantic salmon (Salmo salar) aquaculture farms. Under Review in Aquaculture (Elsevier).en_GB
dc.rightsAfter embargo period ends, rights covered by the standard CC-BY 4.0 licence: https://creativecommons.org/licenses/by/4.0/en_GB
dc.subjectAtlantic salmonen_GB
dc.subjectAquacultureen_GB
dc.subjectFish behaviouren_GB
dc.subjectGill healthen_GB
dc.subjectMachine learningen_GB
dc.subjectPrecision farmingen_GB
dc.subject.classification::Animal science::Animal diseasesen_GB
dc.subject.classification::Animal science::Animal behaviouren_GB
dc.subject.classification::Animal science::Animal welfareen_GB
dc.titleAtlantic salmon activity data derived from AI algorithm at commercial aquaculture farmen_GB
dc.typedataseten_GB
dc.rights.embargoreasonEmbargo files until related article is publisheden_GB
dc.rights.embargoterms2025-03-10en_GB
dc.rights.embargoliftdate2025-03-10-
dc.contributor.emailmeredith.burke@stir.ac.uken_GB
dc.identifier.projectid10028961en_GB
dc.title.projectNext-generation automated salmon feeding to increase productivity and improve sustainability and fish welfareen_GB
dc.contributor.affiliationUniversity of Stirling (Aquaculture)en_GB
dc.rights.embargoenddate2025-03-09-
dc.date.publicationyear2025en_GB
dc.description.notesThere is data populated in columns called schooling, speed, visibility but these have not been validated.en_GB
dc.identifier.wtid1779991en_GB
Appears in Collections:University of Stirling Research Data

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