This paper presents a deep learning-based approach to automatically classify the rust level of screws using ResNet-18 and MobileNetV3 convolutional neural networks. A controlled salt-spray chamber was used to simulate corrosion on metal screws over 0h, 48h, 96h, and 168h of exposure. Images were processed with a circledetection algorithm to extract individual screws, followed by data augmentation and training. The final models achieved a classification accuracy greater than 94% on the validation set.
Automatic assessment of rust level on screws using convolutional neural networks / Mandolini, M., Manuguerra, L., Dimanche, S., Formentini, G.. - 6:(2026), pp. 2443-2452. [10.1017/pds.2026.10602]
Automatic assessment of rust level on screws using convolutional neural networks
Mandolini, Marco
Primo
Methodology
;Manuguerra, LucaWriting – Original Draft Preparation
;
2026-01-01
Abstract
This paper presents a deep learning-based approach to automatically classify the rust level of screws using ResNet-18 and MobileNetV3 convolutional neural networks. A controlled salt-spray chamber was used to simulate corrosion on metal screws over 0h, 48h, 96h, and 168h of exposure. Images were processed with a circledetection algorithm to extract individual screws, followed by data augmentation and training. The final models achieved a classification accuracy greater than 94% on the validation set.| File | Dimensione | Formato | |
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