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AI-Enabled RF-Sensing for Radar Detection of Body-Worn IEDs

Kumudu Senarathne, Ashan Hatharasinghe, Wathsala Seram, Dilshara Herath,Chatura Seneviratne,Arjuna Madanayake

SoutheastCon 2024(2024)

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摘要
The threat posed by improvised explosive devices (IEDs) worn by suicide bombers has intensified in recent years. It is imperative to detect whether a suspected bomber is wearing an IED at a sufficiently large distance to mitigate such threats. This paper proposes an approach that utilizes radar technology and a deep-learning algorithm to identify body-worn IEDs. We employed CST Studio Suite, a high-performance 3D electromagnetic analysis software, to facilitate full-wave simulations. The fundamental characteristics of the radar cross section (RCS) of IEDs were found for various metallic, non-metallic, and human (soft tissue) models. We developed a deep learning (DL) model, which was trained and tested using data from CST simulations conducted with CST Studio Suite software. The DL model was able to achieve 96% of average detection accurac.
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关键词
Improvised Explosive Devices,Radar Cross Section,Computer Simulation Technology
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