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Model-based Transfer Learning for Automatic Optical Inspection based on domain discrepancy

Authors :
Salgado, Erik Isai Valle
Yan, Haoxin
Hong, Yue
Zhu, Peiyuan
Zhu, Shidong
Liao, Chengwei
Wen, Yanxiang
Li, Xiu
Qian, Xiang
Wang, Xiaohao
Li, Xinghui
Source :
Proc. SPIE 12317, Optoelectronic Imaging and Multimedia Technology IXMultimedia Technology IX, 2023
Publication Year :
2023

Abstract

Transfer learning is a promising method for AOI applications since it can significantly shorten sample collection time and improve efficiency in today's smart manufacturing. However, related research enhanced the network models by applying TL without considering the domain similarity among datasets, the data long-tailedness of a source dataset, and mainly used linear transformations to mitigate the lack of samples. This research applies model-based TL via domain similarity to improve the overall performance and data augmentation in both target and source domains to enrich the data quality and reduce the imbalance. Given a group of source datasets from similar industrial processes, we define which group is the most related to the target through the domain discrepancy score and the number of samples each has. Then, we transfer the chosen pre-trained backbone weights to train and fine-tune the target network. Our research suggests increases in the F1 score and the PR curve up to 20% compared with TL using benchmark datasets.<br />Comment: This is a fix of the published paper "Relational-based transfer learning for automatic optical inspection based on domain discrepancy"

Details

Database :
arXiv
Journal :
Proc. SPIE 12317, Optoelectronic Imaging and Multimedia Technology IXMultimedia Technology IX, 2023
Publication Type :
Report
Accession number :
edsarx.2301.05897
Document Type :
Working Paper
Full Text :
https://doi.org/10.1117/12.2644087