2021
DOI: 10.1109/access.2021.3107782
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Coded-Aperture Computational Millimeter-Wave Image Classifier Using Convolutional Neural Network

Abstract: A millimeter-wave (mmW) classifier system applied to images synthesized from a codedaperture 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… Show more

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Cited by 15 publications
(19 citation statements)
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“…More recently, various machine learning and deep learning algorithms have been applied in computational imaging [126][127][128][129][130] and inverse scattering, 131,132 including some cases of compressive metaimagers. 58,82,83,97,[133][134][135] Their potential benefits include fast online inference on tasks that are difficult or impossible to formulate analytically, at the cost of expensive offline training accompanied by a need for a large training dataset. With reference to the sensing pipeline from Fig.…”
Section: Image Reconstruction Algorithmsmentioning
confidence: 99%
“…More recently, various machine learning and deep learning algorithms have been applied in computational imaging [126][127][128][129][130] and inverse scattering, 131,132 including some cases of compressive metaimagers. 58,82,83,97,[133][134][135] Their potential benefits include fast online inference on tasks that are difficult or impossible to formulate analytically, at the cost of expensive offline training accompanied by a need for a large training dataset. With reference to the sensing pipeline from Fig.…”
Section: Image Reconstruction Algorithmsmentioning
confidence: 99%
“…Second, because the training size is increased, the computation time and memory requirement for the training process will also increase. To overcome these issues, we have developed a physical model to simulate a mmW radar imaging framework [11], [12]. The imaging model is based on the computational imaging (CI) coded aperture technique [13]- [16].…”
Section: A Motivationmentioning
confidence: 99%
“…Fig. 3 shows the set-up of the CI model [11], [12]. It consists of two dynamic apertures: transmitter and receiver, operating in a bi-static mode.…”
Section: B Physical Model Layout and Specificationsmentioning
confidence: 99%
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