About | Contact Us | Register | Login
ProceedingsSeriesJournalsSearchEAI
Smart Grid and Internet of Things. 7th EAI International Conference, SGIoT 2023, TaiChung, Taiwan, November 18-19, 2023, Proceedings

Research Article

Study on Anomaly Classifier with Domain Adaptation

Cite
BibTeX Plain Text
  • @INPROCEEDINGS{10.1007/978-3-031-55976-1_1,
        author={Chien Hung Wu and Rung Shiang Cheng and Chi Han Chen},
        title={Study on Anomaly Classifier with Domain Adaptation},
        proceedings={Smart Grid and Internet of Things. 7th EAI International Conference, SGIoT 2023, TaiChung, Taiwan, November 18-19, 2023, Proceedings},
        proceedings_a={SGIOT},
        year={2024},
        month={3},
        keywords={manufacturing defect anomaly detection domain shift domain adaptation},
        doi={10.1007/978-3-031-55976-1_1}
    }
    
  • Chien Hung Wu
    Rung Shiang Cheng
    Chi Han Chen
    Year: 2024
    Study on Anomaly Classifier with Domain Adaptation
    SGIOT
    Springer
    DOI: 10.1007/978-3-031-55976-1_1
Chien Hung Wu, Rung Shiang Cheng, Chi Han Chen,*
    *Contact email: rscheng@ocu.edu.tw

    Abstract

    There are various characteristics of industrial defects, and there is no fixed pattern to search for. Typically, anomaly detection models are used to identify defects. However, after experiencing a domain gap, industrial defect images often lead to a decrease in the verification accuracy of the source model. We conducted experiments to validate this and employed a domain adaptation model. Using color transformation algorithms, we generated source images with domain gaps and introduced them to a pre-trained model. We trained the model to learn features from the source domain and utilized a domain discriminator to differentiate between features from the source and target domains, assuming that the mappings of the target and source domains come from the same distribution. Comparative experimental results demonstrate that the domain adaptation model has a significant impact on improving accuracy. Specifically, the accuracy of the original “flower” category increased from 43.98% to 89.23%, and the “cable” category improved from 75.33% to 85.66%.

    Keywords
    manufacturing defect anomaly detection domain shift domain adaptation
    Published
    2024-03-15
    Appears in
    SpringerLink
    http://dx.doi.org/10.1007/978-3-031-55976-1_1
    Copyright © 2023–2025 ICST
    EBSCOProQuestDBLPDOAJPortico
    EAI Logo

    About EAI

    • Who We Are
    • Leadership
    • Research Areas
    • Partners
    • Media Center

    Community

    • Membership
    • Conference
    • Recognition
    • Sponsor Us

    Publish with EAI

    • Publishing
    • Journals
    • Proceedings
    • Books
    • EUDL