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X-Ray Security Checkpoint System Using Storage Media Detection Method Based on Deep Learning for Information Security

  • Received : 2022.09.14
  • Accepted : 2022.09.19
  • Published : 2022.10.31

Abstract

Recently, as the demand for physical security technology to prevent leakage of technical and business information of companies and public institutions increases, the high tech companies are operating X-ray security checkpoints at building entrances to protect their intellectual property and technology. X-ray security checkpoints are operated to detect cameras and storage media that may store or leak important technologies in the bags of people entering and leaving the building. In this study, we propose an X-ray security checkpoint system that automatically detects a storage medium in an X-ray image using a deep learning based object detection method. The proposed system consists of an edge computing unit and a cloud-computing unit. We employ the RetinaNet for automatic storage media detection in the X-ray security checkpoint images. The proposed approach achieved mAP of 95.92% on private dataset.

Keywords

Acknowledgement

This work was supported by a Research Grant of Andong National University (2021)

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