Towards Learning Object Detectors with Limited Data for Industrial Applications
Abstract
In 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.
Keywords
Optical Inspection; Object Detection; Deep Learning; Few Shot Learning; Optische Inspektion; Objekt-Erkennung; Computer Vision; Tiefes LernenDOI
10.5445/KSP/1000174849ISBN
9783731513896Publisher
KIT Scientific PublishingPublisher website
https://www.ksp.kit.edu/index.php?link=shop&sort=allPublication date and place
2025Series
Schriftenreihe Automatische Sichtprüfung und Bildverarbeitung, 8Classification
Maths for computer scientists