Travail de fin d'études et stage[BR]- Travail de fin d'études : Design and Development of a Computer-Aided Quality Inspection Station Using Hybrid AI and Rule-Based Image Processing Techniques[BR]- Stage d'insertion professionnelle : Eutomation & Scansys (Eupen, BE)
Beckers, Thibault
Promotor(s) :
Bruls, Olivier
Date of defense : 30-Jun-2025/1-Jul-2025 • Permalink : http://hdl.handle.net/2268.2/23171
Details
| Title : | Travail de fin d'études et stage[BR]- Travail de fin d'études : Design and Development of a Computer-Aided Quality Inspection Station Using Hybrid AI and Rule-Based Image Processing Techniques[BR]- Stage d'insertion professionnelle : Eutomation & Scansys (Eupen, BE) |
| Translated title : | [fr] Conception et développement d'une station de contrôle qualité assistée par ordinateur utilisant des techniques hybrides d’intelligence artificielle et de traitement d’images basé sur des règles |
| Author : | Beckers, Thibault
|
| Date of defense : | 30-Jun-2025/1-Jul-2025 |
| Advisor(s) : | Bruls, Olivier
|
| Committee's member(s) : | Duysinx, Pierre
Arnst, Maarten
Carpentier, Pierre |
| Language : | English |
| Number of pages : | 154 |
| Discipline(s) : | Engineering, computing & technology > Mechanical engineering |
| Institution(s) : | Université de Liège, Liège, Belgique |
| Degree: | Master en ingénieur civil mécanicien, à finalité spécialisée en technologies durables en automobile |
| Faculty: | Master thesis of the Faculté des Sciences appliquées |
Abstract
[en] In production settings where accuracy and consistency are key, visual quality inspection remains a core component of the production process. Traditional rule-based approaches, while being rapid and reliable, lack adaptability for coping with complex or unforeseen varieties of defects. Artificial intelligence techniques offer greater adaptability but are computationally and data-intensive, and at times, not interpretable. This thesis proposes the development of a hybrid quality inspection station which combines both approaches and takes advantage of their respective strengths.
The system is deployed using a modular Python platform so that both conventional image processing techniques and AI models can be integrated into an integrated, user-configurable framework. The approach is integrated with industrial Programmable Logic Controllers (PLCs) to provide for compatibility in real-world production environments and control systems. In particular, the system targets surface inspection of machined components, where the detection of over-machining defects or subtle cracks requires precision and context adaptation.
Development involved a detailed decomposition of hardware constraints, system latency, and model complexity versus inference time trade-offs. Different inspection pipelines were explored, ranging from rule-based threshold techniques to convolutional neural networks. The outcome shows that the hybrid architecture enables a balanced optimum between interpretability and strong detection, and modular upgrades or reconfiguration based on production needs are enabled.
In conclusion, this thesis provides a robust and scalable industrial real-time quality control platform that balances deterministic reasoning with intelligent inference methods. It provides a foundation for horizontally deployable and scalable expansion and integration of additional AI capability within visual inspection systems.
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