A Hierarchical hybrid architecture with CNN autoencoder for foreign object detection on jig surfaces in smartphone screen manufacturing
Keywords:
Anomaly Detection, Automated Optical Inspection, CNN Autoencoder, Industrial Image Processing, Jig Surface Inspection, Robust StatisticsAbstract
Foreign object and surface defect detection on inspection jigs is critical in smartphone screen manufacturing, demanding both real-time speed and high accuracy. This paper proposes a Hierarchical Hybrid Pipeline comprising two phases: Phase 1 employs traditional image processing with rigid Euclidean alignment, absolute background subtraction, and robust-statistics-based dynamic thresholding (Median + k × MAD) for high-speed full-frame screening; Phase 2 employs an unsupervised CNN Autoencoder with Ensemble anomaly scoring (Local MSE + Feature-based MSE) for in-depth verification of suspect regions. Evaluated on a dataset collected from an actual Lamination production line, Phase 1 achieves 99.25% Accuracy on 1,200 images (120–200 ms processing time). Phase 2 attains an AUC-ROC of 0.971 and F1-score of 0.961 with 97.1% Recall. The complete pipeline executes within 300–350 ms on industrial CPU hardware, satisfying real-time production requirements.
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Copyright (c) 2026 Journal of Measurement, Control and Automation

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