NOVEL HYBRID ALGORITHM USING CONVOLUTIONAL AUTOENCODER WITH SVM FOR ELECTRICAL IMPEDANCE TOMOGRAPHY AND ULTRASOUND COMPUTED TOMOGRAPHY

Łukasz Maciura

lukasz.maciura@netrix.com.pl
Research and Development Center, Netrix S.A,. Lublin, Poland (Poland)
http://orcid.org/0000-0001-8657-3472

Dariusz Wójcik


Research and Development Center, Netrix S.A,. Lublin, Poland (Poland)
http://orcid.org/0000-0002-4200-3432

Tomasz Rymarczyk


Research and Development Center, Netrix S.A,. Lublin, Poland (Poland)
http://orcid.org/0000-0002-3524-9151

Krzysztof Król


Research and Development Center, Netrix S.A,. Lublin, Poland (Poland)
http://orcid.org/0000-0002-0114-2794

Abstract

This paper presents a new hybrid algorithm using multiple Support Vector Machines models with convolutional autoencoder to Electrical Impedance Tomography, and Ultrasound Computed Tomography image reconstruction. The ultimate hybrid solution uses multiple SVM models to convert input measurements to individual autoencoder codes representing a given scene then the decoder part of the autoencoder can reconstruct the scene


Keywords:

convolutional autoencoder, SVM, electrical impedance tomography, ultrasound transmission tomography

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Published
2023-06-30

Cited by

Maciura, Łukasz, Wójcik, D., Rymarczyk, T., & Król, K. (2023). NOVEL HYBRID ALGORITHM USING CONVOLUTIONAL AUTOENCODER WITH SVM FOR ELECTRICAL IMPEDANCE TOMOGRAPHY AND ULTRASOUND COMPUTED TOMOGRAPHY. Informatyka, Automatyka, Pomiary W Gospodarce I Ochronie Środowiska, 13(2), 4–9. https://doi.org/10.35784/iapgos.3377

Authors

Łukasz Maciura 
lukasz.maciura@netrix.com.pl
Research and Development Center, Netrix S.A,. Lublin, Poland Poland
http://orcid.org/0000-0001-8657-3472

Authors

Dariusz Wójcik 

Research and Development Center, Netrix S.A,. Lublin, Poland Poland
http://orcid.org/0000-0002-4200-3432

Authors

Tomasz Rymarczyk 

Research and Development Center, Netrix S.A,. Lublin, Poland Poland
http://orcid.org/0000-0002-3524-9151

Authors

Krzysztof Król 

Research and Development Center, Netrix S.A,. Lublin, Poland Poland
http://orcid.org/0000-0002-0114-2794

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