Secure Hardware Assurance Using Visual AI and Deep Learning on AOI Imaging of Electronic Assemblies
Abstract
High-reliability electronics demand full-coverage verification of component integrity, yet conventional inspection methods remain limited in scope and unable to detect subtle or undocumented modifications. This work presents a secure hardware assurance framework that leverages visual AI, specifically deep learning applied to high-resolution images from Automated Optical Inspection (AOI) systems, to detect component-level anomalies in printed circuit board assemblies (PCBAs). By combining object detection and semantic segmentation, the system identifies unauthorized modifications, substitutions, and structural deviations with high precision. Trained on multi-domain datasets including clean production boards and degraded scrap units, the model generalizes across real-world conditions with over 99% detection accuracy and sub-second board-level analysis times. In light of recent hardware-level cyber threats, such as the discovery of rogue communication devices embedded in commercial infrastructure, the need for scalable, image-based verification has never been more critical. This method transforms existing AOI data into an intelligent layer of visual forensics, enabling manufacturers to detect covert hardware changes and enforce trust in deployed electronic systems.
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