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  4. Coded-Aperture Computational Millimeter-Wave Image Classifier Using Convolutional Neural Network
 
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2021
Journal Article
Title

Coded-Aperture Computational Millimeter-Wave Image Classifier Using Convolutional Neural Network

Abstract
A millimeter-wave (mmW) classifier system applied to images synthesized from a coded-aperture based computational imaging (CI) radar is presented. A developed physical model of a CI system is used to generate the image dataset for the classification algorithm. A convolutional neural network (CNN) is integrated with the physical model and trained using the dataset comprising of synthesized mmW images obtained directly from the developed CI physical model. A ${k}$ -fold cross validation technique is applied during the training process to validate the classification model. The coded-aperture CI concept enables image reconstruction from a significantly reduced number of back-scattered measurements by facilitating physical layer compression. This physical layer compression can substantially simplify the data acquisition layer of imaging radars, which is realized using only two channels in this article. The integration of the classification algorithm with the CI numerical model is particularly important in enabling the training step to be carried out using relevant system metrics and without the necessity for experimental data. Leveraging the CI numerical model generated data, training step for the classification algorithm is achieved in real-time while also confirming that the numerically trained CI classifier offers high accuracy with both simulated and experimental data. The classifier integrated physical model also enables performance analysis of the classification algorithm to be carried out as a function of key system metrics such as signal-to-noise (SNR) level, ensuring a complete understanding of the classification accuracy under different operating conditions. The trained CI system is tested with synthesized mmW images from the physical model and a classification accuracy of 89% is achieved. The proposed model is also verified using experimental data validating the fidelity of the developed CI integrated classifier system. A classification latency of 3.8 ms per frame is achieved, paving the way for real-time automated threat detection (ATD) for security-screening applications.
Author(s)
Sharma, Rahul
Institute of Electronics, Communication and Information Technology, Queen's University Belfast, Belfast BT3 9DT, U.K.
Hussung, Raphael  
Fraunhofer-Institut für Techno- und Wirtschaftsmathematik ITWM  
Keil, Andreas  
Fraunhofer-Institut für Techno- und Wirtschaftsmathematik ITWM  
Friederich, Fabian  
Fraunhofer-Institut für Techno- und Wirtschaftsmathematik ITWM  
Fromenteze, Thomas
XLIM, UMR 7252, University of Limoges, 87000 Limoges, France
Khalily, Mohsen
5G and 6G Innovation Centre (5GIC and 6GIC), Institute for Communication Systems (ICS), University of Surrey, Guildford GU2 7XH, U.K.
Deka, Bhabesh
Department of Electronics and Communication Engineering, Tezpur University, Tezpur 784028, India
Fucso, Vincent
Institute of Electronics, Communication and Information Technology, Queen's University Belfast, Belfast BT3 9DT, U.K.
Yurduseven, Okan
Institute of Electronics, Communication and Information Technology, Queen's University Belfast, Belfast BT3 9DT, U.K.
Journal
IEEE access  
Open Access
DOI
10.1109/ACCESS.2021.3107782
Language
English
Fraunhofer-Institut für Techno- und Wirtschaftsmathematik ITWM  
Keyword(s)
  • millimeter-wave

  • imaging radar

  • Computational Imaging

  • neural networks

  • image classification

  • coded-aperture

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