Publication:
FourierLoss: Shape-aware loss function with Fourier descriptors

dc.contributor.coauthorEtiz, Durmuş
dc.contributor.coauthorYakar, Melek Coşar
dc.contributor.coauthorDuruer, Kerem
dc.contributor.coauthorBarut, Berke
dc.contributor.departmentKUIS AI (Koç University & İş Bank Artificial Intelligence Center)
dc.contributor.departmentDepartment of Computer Engineering
dc.contributor.kuauthorMaster Student, Erden, Mehmet Bahadır
dc.contributor.kuauthorPhD Student, Cansız, Selahattin
dc.contributor.kuauthorPhD Student, Çakı, Onur
dc.contributor.kuauthorFaculty Member, Demir, Çiğdem Gündüz
dc.contributor.schoolcollegeinstituteCollege of Engineering
dc.date.accessioned2025-05-22T10:32:26Z
dc.date.available2025-05-22
dc.date.issued2025
dc.description.abstractEncoder–decoder networks are commonly used for medical image segmentation tasks. When they are trained with a standard loss function, these networks are not explicitly enforced to preserve the shape integrity of an object in an image. However, this ability of the network is important to obtain more accurate results, especially when there is a low-contrast difference between the object and its surroundings. To respond this issue, this work introduces a new shape-aware loss function, which we name FourierLoss. This loss function relies on quantifying the shape dissimilarity between the ground truth and the predicted segmentation maps through the Fourier descriptors calculated on the objects of these maps, and penalizing this dissimilarity in network training. Different than the previous studies, FourierLoss offers an adaptive loss function with trainable hyperparameters that control the importance of the level of the shape details that the network is enforced to learn in the training process. This control is achieved by the proposed adaptive loss update mechanism, which end-to-end learns the hyperparameters simultaneously with the network weights by backpropagation. As a result of using this mechanism, the network can dynamically change its attention from learning the general outline of an object to learning the details of its contour points, or vice versa, in different training epochs. Working on two different datasets, our experiments revealed that the proposed adaptive shape-aware loss function led to statistically significantly better results for liver segmentation, compared to its counterparts. © 2025 Elsevier B.V.
dc.description.fulltextNo
dc.description.harvestedfromManual
dc.description.indexedbyScopus
dc.description.indexedbyWOS
dc.description.publisherscopeInternational
dc.description.readpublishN/A
dc.description.sponsoredbyTubitakEuTÜBİTAK
dc.description.sponsorshipTürkiye Bilimsel ve Teknolojik Araştırma Kurumu, TÜBİTAK, (120E497); Türkiye Bilimsel ve Teknolojik Araştırma Kurumu, TÜBİTAK
dc.identifier.doi10.1016/j.neucom.2025.130155
dc.identifier.eissn1872-8286
dc.identifier.embargoNo
dc.identifier.issn0925-2312
dc.identifier.quartileN/A
dc.identifier.scopus2-s2.0-105002023523
dc.identifier.urihttps://hdl.handle.net/20.500.14288/29180
dc.identifier.urihttps://doi.org/10.1016/j.neucom.2025.130155
dc.identifier.volume638
dc.identifier.wos001467521200001
dc.keywordsAdaptive loss
dc.keywordsComputed tomography
dc.keywordsFourier descriptor
dc.keywordsLiver segmentation
dc.keywordsShape preserving loss
dc.language.isoeng
dc.publisherElsevier B.V.
dc.relation.affiliationKoç University
dc.relation.collectionKoç University Institutional Repository
dc.relation.ispartofNeurocomputing
dc.relation.openaccessNo
dc.rightsCopyrighted
dc.titleFourierLoss: Shape-aware loss function with Fourier descriptors
dc.typeJournal Article
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