A supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for radio tomographic imaging

Radio tomographic imaging (RTI) is an emerging imaging technique that utilizes the shadowing losses on links between multiple pairs of wireless nodes within the sensing area to estimate the attenuation of physical objects. By using an image reconstruction algorithm, the attenuations caused by the ph...

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Main Authors: Lee, Chau Ching, Rahiman, Mohd. Hafiz Fazalul, Abdul Rahim, Ruzairi, Ahmad Saad, Fathinul Syahir
Format: Article
Language:English
Published: Penerbit UTM Press 2021
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Online Access:http://eprints.utm.my/id/eprint/98336/1/RuzairiAbdulRahim2021_ASupervisedDeepFeedforwardNeural.pdf
http://eprints.utm.my/id/eprint/98336/
https://elektrika.utm.my/index.php/ELEKTRIKA_Journal/article/view/310
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spelling my.utm.983362022-12-07T07:34:18Z http://eprints.utm.my/id/eprint/98336/ A supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for radio tomographic imaging Lee, Chau Ching Rahiman, Mohd. Hafiz Fazalul Abdul Rahim, Ruzairi Ahmad Saad, Fathinul Syahir TK Electrical engineering. Electronics Nuclear engineering Radio tomographic imaging (RTI) is an emerging imaging technique that utilizes the shadowing losses on links between multiple pairs of wireless nodes within the sensing area to estimate the attenuation of physical objects. By using an image reconstruction algorithm, the attenuations caused by the physical objects will be transformed into a tomographic image. The tomographic image provides information about the shape, size and position of an object. However, the process of reconstructing a tomographic image from the RSS measurements is an ill-posed inverse problem, meaning that a small number of errors or variations in measurements will lead to a significant impact on the image quality. The existing linear inverse solvers provide fast reconstruction, but the imaging results is non-satisfactory and inaccurate. On the other hand, the nonlinear inverse solvers produce a higher quality image but are computationally expensive. Studies of applying deep learning technique and neural networks in tomographic reconstructions to solve the ill-posed inverse problems have emerged in recent years. However, to the best of our knowledge, the studies conducted in solving the inverse problem of RTI system using deep learning technique are rare. Therefore, a supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for the RTI system is explored in this study to determine the feasibility of deep learning technique in reconstructing a tomographic image using RSS measurements only. Penerbit UTM Press 2021-10-15 Article PeerReviewed application/pdf en http://eprints.utm.my/id/eprint/98336/1/RuzairiAbdulRahim2021_ASupervisedDeepFeedforwardNeural.pdf Lee, Chau Ching and Rahiman, Mohd. Hafiz Fazalul and Abdul Rahim, Ruzairi and Ahmad Saad, Fathinul Syahir (2021) A supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for radio tomographic imaging. ELEKTRIKA- Journal of Electrical Engineering, 20 (2-3). pp. 49-55. ISSN 0128-4428 https://elektrika.utm.my/index.php/ELEKTRIKA_Journal/article/view/310 NA
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
language English
topic TK Electrical engineering. Electronics Nuclear engineering
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
Lee, Chau Ching
Rahiman, Mohd. Hafiz Fazalul
Abdul Rahim, Ruzairi
Ahmad Saad, Fathinul Syahir
A supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for radio tomographic imaging
description Radio tomographic imaging (RTI) is an emerging imaging technique that utilizes the shadowing losses on links between multiple pairs of wireless nodes within the sensing area to estimate the attenuation of physical objects. By using an image reconstruction algorithm, the attenuations caused by the physical objects will be transformed into a tomographic image. The tomographic image provides information about the shape, size and position of an object. However, the process of reconstructing a tomographic image from the RSS measurements is an ill-posed inverse problem, meaning that a small number of errors or variations in measurements will lead to a significant impact on the image quality. The existing linear inverse solvers provide fast reconstruction, but the imaging results is non-satisfactory and inaccurate. On the other hand, the nonlinear inverse solvers produce a higher quality image but are computationally expensive. Studies of applying deep learning technique and neural networks in tomographic reconstructions to solve the ill-posed inverse problems have emerged in recent years. However, to the best of our knowledge, the studies conducted in solving the inverse problem of RTI system using deep learning technique are rare. Therefore, a supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for the RTI system is explored in this study to determine the feasibility of deep learning technique in reconstructing a tomographic image using RSS measurements only.
format Article
author Lee, Chau Ching
Rahiman, Mohd. Hafiz Fazalul
Abdul Rahim, Ruzairi
Ahmad Saad, Fathinul Syahir
author_facet Lee, Chau Ching
Rahiman, Mohd. Hafiz Fazalul
Abdul Rahim, Ruzairi
Ahmad Saad, Fathinul Syahir
author_sort Lee, Chau Ching
title A supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for radio tomographic imaging
title_short A supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for radio tomographic imaging
title_full A supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for radio tomographic imaging
title_fullStr A supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for radio tomographic imaging
title_full_unstemmed A supervised deep feedforward neural network (SDFNN)-based image reconstruction algorithm for radio tomographic imaging
title_sort supervised deep feedforward neural network (sdfnn)-based image reconstruction algorithm for radio tomographic imaging
publisher Penerbit UTM Press
publishDate 2021
url http://eprints.utm.my/id/eprint/98336/1/RuzairiAbdulRahim2021_ASupervisedDeepFeedforwardNeural.pdf
http://eprints.utm.my/id/eprint/98336/
https://elektrika.utm.my/index.php/ELEKTRIKA_Journal/article/view/310
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score 13.250246