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  4. Unsupervised Learning for Industrial Defect Detection: A Case Study on Shearographic Data
 
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2026
Conference Paper
Title

Unsupervised Learning for Industrial Defect Detection: A Case Study on Shearographic Data

Abstract
Shearography is a non-destructive testing method for detecting subsurface defects in materials, offering high sensitivity and full-field inspection capabilities. However, its industrial adoption remains limited due to the need for expert interpretation. To reduce reliance on labeled data and manual evaluation, this study explores unsupervised learning methods for automated anomaly detection in shearographic images. Three architectures are evaluated: a fully connected autoencoder, a convolutional autoencoder, and a student-teacher feature matching model. All models are trained solely on defect-free data. A controlled dataset was developed using a custom specimen with reproducible defect patterns, enabling systematic acquisition of shearographic measurements under both ideal and realistic deformation conditions. Two training subsets were defined: one containing only undistorted, defect-free samples, and one additionally including globally deformed, yet defect-free, data. The latter simulates practical inspection conditions by incorporating deformation-induced fringe patterns that may obscure localized anomalies. The models are evaluated in terms of binary classification and, for the student-teacher model, spatial defect localization. Results show that the student-teacher approach achieves superior classification robustness and enables precise localization. Compared to the autoencoder-based models, it demonstrates improved separability of feature representations, as visualized through t-SNE embeddings. Additionally, a YOLOv8 model trained on labeled defect data serves as a reference to benchmark localization quality. This study underscores the potential of unsupervised deep learning for scalable, label-efficient shearographic inspection in industrial environments.
Author(s)
Plaßmann, Jessica
Hochschule Trier
Schuler, Nicolas
Hochschule Trier
Freymann, Georg von  
Fraunhofer-Institut für Techno- und Wirtschaftsmathematik ITWM  
Schuth, Michael
Hochschule Trier
Mainwork
Artificial Intelligence XLII. Proceedings, Part II  
Conference
International Conference on Artificial Intelligence 2025  
Open Access
DOI
10.1007/978-3-032-11442-6_22
Additional link
Full text
Language
English
Fraunhofer-Institut für Techno- und Wirtschaftsmathematik ITWM  
Keyword(s)
  • Anomaly detection

  • Non-destructive testing (NDT)

  • Shearography

  • Unsupervised learning

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