Deep learning-based methods for defect detection from ultrasound images (CROSBI ID 450027)
Ocjenski rad | doktorska disertacija
Podaci o odgovornosti
Medak, Duje
Lončarić, Sven
engleski
Deep learning-based methods for defect detection from ultrasound images
Ultrasonic testing is a non-destructive evaluation (NDE) technique that is used to inspect the integrity of the material and check if there are any defects in its internal structure. The acquisition of ultrasonic data is already done in an automated fashion using robotic manipulators, but the analysis of the data is still done manually by specially trained experts. Manual analysis is subject to human errors especially when a large amount of data needs to be inspected. The goal of this doctoral dissertation is to develop deep learning-based methods that can be used to efficiently and reliably detect defects from ultrasonic images. Deep learning methods have been achieving great results in many image analysis tasks during the past few years. However, to develop a good deep learning-based method for defect detection, several problems must be solved. Some of the encountered challenges include a small dataset, noise and geometry signals, and extreme aspect ratios of the defects.
ultrasound image analysis ; non-destructive evaluation ; automated defect detection ; object detection ; data augmentation ; image generation ; deep learning
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Podaci o izdanju
107
10.06.2022.
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Podaci o ustanovi koja je dodijelila akademski stupanj
Fakultet elektrotehnike i računarstva
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