Yayın:
Ensemble-LungMaskNet: Automated Lung Segmentation using Ensembled Deep Encoders

dc.contributor.authorOksuz, Cosku
dc.contributor.authorGullu, Mehmet Kemal
dc.contributor.authorUrhan, Oğuzhan
dc.date.accessioned2026-01-04T15:40:57Z
dc.date.issued2021-08-25
dc.description.abstractAutomated lung segmentation has importance because it gives clues about several diseases to the experts. It is the step that comes before further detailed analyses of the lungs. However, segmentation of the lungs is a challenging task since the opacities and consolidations are caused by various lung diseases. As a result, the clarity of the borders of the lungs may be lost which makes the segmentation task difficult. The presence of various medical equipment such as cables in the image is another factor that makes segmentation difficult. Therefore, it is a necessity to develop methods that can handle such situations. Learning the most useful patterns related to various diseases is possible with deep learning methods. Unlike conventional methods, learning the patterns improves the generalization ability of the models on unseen data. For this purpose, a deep segmentation framework including ensembles of pre-trained lightweight networks is proposed for lung region segmentation in this work. The experimental results achieved on two publicly available data sets demonstrate the effectiveness of the proposed framework.
dc.description.urihttps://doi.org/10.1109/inista52262.2021.9548367
dc.description.urihttps://dx.doi.org/10.1109/inista52262.2021.9548367
dc.description.urihttps://avesis.kocaeli.edu.tr/publication/details/1d317117-382e-415a-bbad-c6a3904c4846/oai
dc.identifier.doi10.1109/inista52262.2021.9548367
dc.identifier.endpage8
dc.identifier.openairedoi_dedup___::448a9fc0f79256e624181b3251c5404b
dc.identifier.orcid0000-0002-0352-1560
dc.identifier.scopus2-s2.0-85116691459
dc.identifier.startpage1
dc.identifier.urihttps://hdl.handle.net/20.500.12597/38992
dc.publisherIEEE
dc.relation.ispartof2021 International Conference on INnovations in Intelligent SysTems and Applications (INISTA)
dc.rightsCLOSED
dc.subject.sdg13. Climate action
dc.subject.sdg4. Education
dc.subject.sdg15. Life on land
dc.subject.sdg7. Clean energy
dc.titleEnsemble-LungMaskNet: Automated Lung Segmentation using Ensembled Deep Encoders
dc.typeArticle
dspace.entity.typePublication
local.api.response{"authors":[{"fullName":"Oksuz, Cosku","name":"Cosku","surname":"Oksuz","rank":1,"pid":null},{"fullName":"Gullu, Mehmet Kemal","name":"Mehmet Kemal","surname":"Gullu","rank":2,"pid":null},{"fullName":"URHAN, OĞUZHAN","name":"Oğuzhan","surname":"Urhan","rank":3,"pid":{"id":{"scheme":"orcid","value":"0000-0002-0352-1560"},"provenance":null}}],"openAccessColor":null,"publiclyFunded":false,"type":"publication","language":{"code":"und","label":"Undetermined"},"countries":null,"subjects":[{"subject":{"scheme":"FOS","value":"03 medical and health sciences"},"provenance":null},{"subject":{"scheme":"FOS","value":"0302 clinical medicine"},"provenance":null},{"subject":{"scheme":"SDG","value":"13. Climate action"},"provenance":null},{"subject":{"scheme":"SDG","value":"4. Education"},"provenance":null},{"subject":{"scheme":"FOS","value":"0202 electrical engineering, electronic engineering, information engineering"},"provenance":null},{"subject":{"scheme":"FOS","value":"02 engineering and technology"},"provenance":null},{"subject":{"scheme":"SDG","value":"15. Life on land"},"provenance":null},{"subject":{"scheme":"SDG","value":"7. Clean energy"},"provenance":null}],"mainTitle":"Ensemble-LungMaskNet: Automated Lung Segmentation using Ensembled Deep Encoders","subTitle":null,"descriptions":["Automated lung segmentation has importance because it gives clues about several diseases to the experts. It is the step that comes before further detailed analyses of the lungs. However, segmentation of the lungs is a challenging task since the opacities and consolidations are caused by various lung diseases. As a result, the clarity of the borders of the lungs may be lost which makes the segmentation task difficult. The presence of various medical equipment such as cables in the image is another factor that makes segmentation difficult. Therefore, it is a necessity to develop methods that can handle such situations. Learning the most useful patterns related to various diseases is possible with deep learning methods. Unlike conventional methods, learning the patterns improves the generalization ability of the models on unseen data. For this purpose, a deep segmentation framework including ensembles of pre-trained lightweight networks is proposed for lung region segmentation in this work. The experimental results achieved on two publicly available data sets demonstrate the effectiveness of the proposed framework."],"publicationDate":"2021-08-25","publisher":"IEEE","embargoEndDate":null,"sources":["Crossref"],"formats":null,"contributors":null,"coverages":null,"bestAccessRight":{"code":"c_14cb","label":"CLOSED","scheme":"http://vocabularies.coar-repositories.org/documentation/access_rights/"},"container":{"name":"2021 International Conference on INnovations in Intelligent SysTems and Applications (INISTA)","issnPrinted":null,"issnOnline":null,"issnLinking":null,"ep":"8","iss":null,"sp":"1","vol":null,"edition":null,"conferencePlace":null,"conferenceDate":null},"documentationUrls":null,"codeRepositoryUrl":null,"programmingLanguage":null,"contactPeople":null,"contactGroups":null,"tools":null,"size":null,"version":null,"geoLocations":null,"id":"doi_dedup___::448a9fc0f79256e624181b3251c5404b","originalIds":["10.1109/inista52262.2021.9548367","50|doiboost____|448a9fc0f79256e624181b3251c5404b","3201943283","1d317117-382e-415a-bbad-c6a3904c4846","50|od_____10011::952662306eda75f802c560a4659c560f"],"pids":[{"scheme":"doi","value":"10.1109/inista52262.2021.9548367"}],"dateOfCollection":null,"lastUpdateTimeStamp":null,"indicators":{"citationImpact":{"citationCount":5,"influence":2.8101173e-9,"popularity":5.777364e-9,"impulse":5,"citationClass":"C5","influenceClass":"C5","impulseClass":"C4","popularityClass":"C4"}},"instances":[{"pids":[{"scheme":"doi","value":"10.1109/inista52262.2021.9548367"}],"license":"IEEE Copyright","type":"Article","urls":["https://doi.org/10.1109/inista52262.2021.9548367"],"publicationDate":"2021-08-25","refereed":"peerReviewed"},{"alternateIdentifiers":[{"scheme":"mag_id","value":"3201943283"},{"scheme":"doi","value":"10.1109/inista52262.2021.9548367"}],"type":"Other literature type","urls":["https://dx.doi.org/10.1109/inista52262.2021.9548367"],"refereed":"nonPeerReviewed"},{"alternateIdentifiers":[{"scheme":"doi","value":"10.1109/inista52262.2021.9548367"}],"type":"Conference object","urls":["https://avesis.kocaeli.edu.tr/publication/details/1d317117-382e-415a-bbad-c6a3904c4846/oai"],"publicationDate":"2021-08-25","refereed":"nonPeerReviewed"}],"isGreen":false,"isInDiamondJournal":false}
local.import.sourceOpenAire
local.indexed.atScopus

Dosyalar

Koleksiyonlar