Defect Segmentation Strategy Comparison in Industrial Quality Control
This topic presents a project focused on developing and comparing deep learning strategies for industrial defect detection, emphasizing fine-grained segmentation of multiple defect classes in quality control processes.Industrial QC challenges:
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Industrial quality control requires precise and fast detection of subtle surface defects in processes like painting and welding, where deep learning surpasses traditional fixed-rule vision systems;
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Multiple defect classes: Handling multiple distinct and often imbalanced defect classes such as 'paint run' and 'scratch-deep' demands effective segmentation strategies and training approaches;
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Project objective: The project aims to design, implement, and validate an end-to-end AI pipeline to systematically compare monolithic versus modular deep learning segmentation strategies on a multi-class industrial defect dataset;
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Segmentation strategies: Two main approaches are compared: a monolithic model segmenting all classes simultaneously, which simplifies deployment but risks class interference, and a modular hierarchical approach using specialized models for subsets of classes to improve accuracy at the cost of complexity;
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Evaluation criteria: The comparison focuses on segmentation accuracy for fine-grained classes, computational efficiency, and maintainability in real industrial settings;
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Pipeline details: The project includes data acquisition with high-resolution imaging and pixel-level annotation of up to 10 defect classes, advanced data augmentation, loss functions addressing class imbalance, rigorous training with cross-validation, and real-time inference validation using industrial metrics;
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Learning and profile: Participants will gain expertise in end-to-end AI pipelines, advanced segmentation architectures, strategic model training, industrial data handling, and performance benchmarking, requiring strong deep learning and computer vision fundamentals.
CANDIDATE PROFILE
- Bachelor in Electrical Engineering, Computer Science, Robotics of Mechatronic Engineering;
- Strong basis Deep Learning & Computer Vision;
- Experience with DLframeworks (PyTorch, TensorFlow);
- Affinity with segmentation architectures (UNet, Mask RCNN);
- Result-oriented, proactive, communicative;
- Team player, eager to learn, good knowledge of English.
PRACTICAL DETAILS
Suitable for internship (3–6 months, Leuven) or master's thesis.
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