Automatic and Robust Object Detection in X-Ray Baggage Inspection Using Deep Convolutional Neural Networks

Volume: 68, Issue: 10, Pages: 10248 - 10257
Published: Oct 1, 2021
Abstract
For the purpose of ensuring public security, automatic inspection of X-ray scanners has been deployed at the entry points of many public places to detect dangerous objects. However, current surveillance systems cannot function without human supervision and intervention. In this article, we propose an effective method using deep convolutional neural networks to detect objects during X-ray baggage inspection. As a first step, a large amount of...
Paper Details
Title
Automatic and Robust Object Detection in X-Ray Baggage Inspection Using Deep Convolutional Neural Networks
Published Date
Oct 1, 2021
Volume
68
Issue
10
Pages
10248 - 10257
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