Abstract
For the airports worldwide, it is important to establish a "passenger integrity system" based on the basic information of passengers and their related credit system. Correspondingly, this paper develops a new risk assessment model for the passenger graded security check by introducing several new technologies to obtain the passengers’ real-time status information as well as historical data. We first propose to deploy a variety of 5G-IoT devices to monitor the passengers in real time, including high-definition cameras, millimeter-wave security detectors, etc. We then rely on machine learning to analyze the passenger risk level and integrate improved analytic hierarchy process (AHP) with group decision theory, namely GD-AHP. According to the risk level, the passengers can be classified into known, ordinary and dangerous targets. The differentiated handling of different targets could significantly save the time of security check and improve the passenger experience.
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CITATION STYLE
Chen, W., Huang, Y., Yang, H., Li, J., & Lu, X. (2021). A passenger risk assessment method based on 5G-IoT. Eurasip Journal on Wireless Communications and Networking, 2021(1). https://doi.org/10.1186/s13638-020-01886-z
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