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  4. Multi-Level Feature Fusion for Continual Learning in Visual Quality Inspection
 
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November 24, 2025
Conference Paper
Title

Multi-Level Feature Fusion for Continual Learning in Visual Quality Inspection

Abstract
Deep neural networks show great potential for automating various visual quality inspection tasks in manufacturing. However, their applicability is limited in more volatile scenarios, such as remanufacturing, where the inspected products and defect patterns often change. In such settings, deployed models require frequent adaptation to novel conditions, effectively posing a continual learning problem. To enable quick adaptation, the necessary training processes must be computationally efficient while still avoiding effects like catastrophic forgetting. This work presents a multi-level feature fusion (MLFF) approach that aims to improve both aspects simultaneously by utilizing representations from different depths of a pretrained network. We show that our approach is able to match the performance of end-to-end training for different quality inspection problems while using significantly less trainable parameters. Furthermore, it reduces catastrophic forgetting and improves generalization robustness to new product types or defects.
Author(s)
Bauer, Johannes
TU München, Institut für Werkzeugmaschinen und Betriebswissenschaften  
Geng, Paul
TU München, Institut für Werkzeugmaschinen und Betriebswissenschaften  
Trattnig, Stephan
TU München, Institut für Werkzeugmaschinen und Betriebswissenschaften  
Dokládal, Petr
École Nationale Supérieure des Mines de Paris (MINES Paris - PSL)
Daub, Rüdiger  
Fraunhofer-Institut für Gießerei-, Composite- und Verarbeitungstechnik IGCV  
Mainwork
13th International Conference on Control, Mechatronics and Automation, ICCMA 2025  
Conference
International Conference on Control, Mechatronics and Automation 2025  
Open Access
DOI
10.1109/ICCMA67641.2025.11369688
Additional link
Full text
Language
English
Fraunhofer-Institut für Gießerei-, Composite- und Verarbeitungstechnik IGCV  
Fraunhofer Group
Fraunhofer-Verbund Produktion  
Keyword(s)
  • deep learning

  • continual learning

  • remanufacturing

  • quality inspection

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