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dc.contributor.authorGuirguis, Karim
dc.date.accessioned2025-11-24T00:29:58Z
dc.date.available2025-11-24T00:29:58Z
dc.date.issued2025
dc.date.submitted2025-04-14T12:06:32Z
dc.identifierhttps://library.oapen.org/handle/20.500.12657/100728
dc.identifier.urihttps://doab-dev.siscern.org/handle/20.500.12854/204553
dc.description.abstractIn this dissertation, three novel Generalized Few-Shot Object Detection (G-FSOD) approaches are presented to minimize the forgetting of previously learned classes while learning new classes with limited data. The first two approaches reduce the forgetting of base classes if they are still available during training. The third approach, for scenarios without base data, uses knowledge distillation to improve the knowledge transfer.
dc.languageEnglish
dc.relation.ispartofseriesSchriftenreihe Automatische Sichtprüfung und Bildverarbeitung
dc.rightsopen access
dc.subject.classificationthema EDItEUR::U Computing and Information Technology::UY Computer science::UYA Mathematical theory of computation::UYAM Maths for computer scientists
dc.subject.otherOptical Inspection; Object Detection; Deep Learning; Few Shot Learning; Optische Inspektion; Objekt-Erkennung; Computer Vision; Tiefes Lernen
dc.titleTowards Learning Object Detectors with Limited Data for Industrial Applications
dc.typebook
oapen.identifier.doi10.5445/KSP/1000174849
oapen.relation.isPublishedBy68fffc18-8f7b-44fa-ac7e-0b7d7d979bd2
oapen.relation.isbn9783731513896
oapen.pages262
dc.seriesnumber8


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