Utilizing Resonant Scattering Signal Characteristics of Magnetic Spheres via Deep Learning for Improved Target Classification
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Date
2019
Authors
M. Alper Selver
Tugce Toprak
Mustafa Secmen
E. Yesim Zoral
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE
Open Access Color
Green Open Access
Yes
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Publicly Funded
No
Abstract
Object classification using LAte-time Resonant Scattering Electromagnetic Signals (LARSESs) is a significant problem found in different areas of application. Due to their special properties spherical objects play an important role in this field both as a challenging target and analytical LARSES source. Although many studies focus on their detailed analysis the challenges associated with target classification by resonant LARSESs from multi-layer spheres have not been investigated in detail. Moreover existing studies made the simplifying assumption that the objects having (one or more) layers constitute equal permeability values at the core and coatings. However especially for metamaterials magneto-dielectric inclusions require consideration of magnetic properties as well as dielectric ones. In this respect this study shows that the utilization LARSESs of magnetic spheres provides diverse information and features which result with superior object classification performance. For this purpose first time domain LARSESs are generated numerically for single and multi-layer radially symmetrical dielectric and magnetic spheres. Then by using emerging deep learning tools particularly Convolutional Neural Network (CNNs) which are trained with spheres having different material properties a high multi-layer object classification performance is achieved. Moreover by extending the proposed strategy to measured data via modern data augmentation and transfer learning techniques an improved classification performance is also obtained for more complex targets.
Description
Keywords
magnetic spheres, deep learning, ensembles, target classification, time-domain scattered signals, transfer learning, ELECTROMAGNETIC SCATTERING, WAVE, Deep Learning, Transfer Learning, Target Classification, Time-Domain Scattered Signals, Magnetic Spheres, Ensembles
Fields of Science
0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
WoS Q
Scopus Q

OpenCitations Citation Count
1
Source
International Symposium on Advanced Electrical and Communication Technologies (ISAECT)
Volume
Issue
Start Page
1
End Page
5
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Scopus : 1
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