Automated Quality Control of Vacuum Insulated Glazing by Convolutional Neural Network Image Classification
Henrik Riedel, Sleheddine Mokdad, Isabell Schulz, Cenk Kocer, and Philipp Rosendahl, Jens Schneider, Michael A. Kraus, Michael, Drass

TL;DR
This paper presents an automated damage detection system for Vacuum Insulated Glazing using convolutional neural networks, achieving perfect classification accuracy and outperforming existing models in identifying surface defects.
Contribution
The study introduces a novel deep learning approach with explainability features for VIG damage classification, demonstrating superior performance and efficiency over traditional models.
Findings
Achieved 100% AUC in damage classification
Outperformed ResNet models in accuracy and speed
Effectively detected surface cracks and defects
Abstract
Vacuum Insulated Glazing (VIG) is a highly thermally insulating window technology, which boasts an extremely thin profile and lower weight as compared to gas-filled insulated glazing units of equivalent performance. The VIG is a double-pane configuration with a submillimeter vacuum gap between the panes and therefore under constant atmospheric pressure over their service life. Small pillars are positioned between the panes to maintain the gap, which can damage the glass reducing the lifetime of the VIG unit. To efficiently assess any surface damage on the glass, an automated damage detection system is highly desirable. For the purpose of classifying the damage, we have developed, trained, and tested a deep learning computer vision system using convolutional neural networks. The classification model flawlessly classified the test dataset with an area under the curve (AUC) for the…
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Taxonomy
Methodstravel james · Test
