Comparative Model Efficiency Analysis Based on Dissimilar Algorithms for Image Learning and Correction as a Means of Fault-Finding

The introduction of technology in different sectors to optimise efficiency is increasing rapidly. As a result of the opportunities that artificial intelligence presents to different sectors by optimally performing tasks with less error compared to humans or traditional models, the use of AI in artef...

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Main Authors: Joe Benganga, Tshepo Kukuni, Ben Kotze, Lepekola Lenkoe
Format: Article
Language:English
Published: MDPI AG 2025-05-01
Series:Mathematics
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Online Access:https://www.mdpi.com/2227-7390/13/11/1835
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author Joe Benganga
Tshepo Kukuni
Ben Kotze
Lepekola Lenkoe
author_facet Joe Benganga
Tshepo Kukuni
Ben Kotze
Lepekola Lenkoe
author_sort Joe Benganga
collection DOAJ
description The introduction of technology in different sectors to optimise efficiency is increasing rapidly. As a result of the opportunities that artificial intelligence presents to different sectors by optimally performing tasks with less error compared to humans or traditional models, the use of AI in artefact detection is being investigated. This research paper thus presents a comparative model efficiency analysis based on dissimilar algorithms, namely CNN, VGG16, Inception_V3, and ResNet_50. The model developed was based on images that were obtained from a Toshiba CT scanner for two types of datasets (88 image datasets) and 170 image datasets, both comprising metal and ring artefacts. Furthermore, the results demonstrate higher data losses in the data transfer learning due to data recycling, suggesting that the model is prone to image feature losses when the model threshold is set at 75%. Additionally, two data transfer models were evaluated against “our model”. The results demonstrate that VGG16 performed better in terms of data accuracy than both the testing and training models, while the Resnet_50 algorithm performed poorly in terms of the loss encountered compared to the other three algorithms.
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spelling doaj-art-0e98a45d0f2c4d19bc6aab8056c3fb262025-08-20T02:32:57ZengMDPI AGMathematics2227-73902025-05-011311183510.3390/math13111835Comparative Model Efficiency Analysis Based on Dissimilar Algorithms for Image Learning and Correction as a Means of Fault-FindingJoe Benganga0Tshepo Kukuni1Ben Kotze2Lepekola Lenkoe3Department of Electrical, Electronic and Computer Systems Engineering, Central University of Technology, 20 President Brandt Street, Bloemfontein 9300, Free-State, South AfricaDepartment of Electrical, Electronic and Computer Systems Engineering, Central University of Technology, 20 President Brandt Street, Bloemfontein 9300, Free-State, South AfricaDepartment of Electrical, Electronic and Computer Systems Engineering, Central University of Technology, 20 President Brandt Street, Bloemfontein 9300, Free-State, South AfricaDepartment of Electrical, Electronic and Computer Systems Engineering, Central University of Technology, 20 President Brandt Street, Bloemfontein 9300, Free-State, South AfricaThe introduction of technology in different sectors to optimise efficiency is increasing rapidly. As a result of the opportunities that artificial intelligence presents to different sectors by optimally performing tasks with less error compared to humans or traditional models, the use of AI in artefact detection is being investigated. This research paper thus presents a comparative model efficiency analysis based on dissimilar algorithms, namely CNN, VGG16, Inception_V3, and ResNet_50. The model developed was based on images that were obtained from a Toshiba CT scanner for two types of datasets (88 image datasets) and 170 image datasets, both comprising metal and ring artefacts. Furthermore, the results demonstrate higher data losses in the data transfer learning due to data recycling, suggesting that the model is prone to image feature losses when the model threshold is set at 75%. Additionally, two data transfer models were evaluated against “our model”. The results demonstrate that VGG16 performed better in terms of data accuracy than both the testing and training models, while the Resnet_50 algorithm performed poorly in terms of the loss encountered compared to the other three algorithms.https://www.mdpi.com/2227-7390/13/11/1835artefactCT scannermetal artefactring artefactmachine learningimage learning
spellingShingle Joe Benganga
Tshepo Kukuni
Ben Kotze
Lepekola Lenkoe
Comparative Model Efficiency Analysis Based on Dissimilar Algorithms for Image Learning and Correction as a Means of Fault-Finding
Mathematics
artefact
CT scanner
metal artefact
ring artefact
machine learning
image learning
title Comparative Model Efficiency Analysis Based on Dissimilar Algorithms for Image Learning and Correction as a Means of Fault-Finding
title_full Comparative Model Efficiency Analysis Based on Dissimilar Algorithms for Image Learning and Correction as a Means of Fault-Finding
title_fullStr Comparative Model Efficiency Analysis Based on Dissimilar Algorithms for Image Learning and Correction as a Means of Fault-Finding
title_full_unstemmed Comparative Model Efficiency Analysis Based on Dissimilar Algorithms for Image Learning and Correction as a Means of Fault-Finding
title_short Comparative Model Efficiency Analysis Based on Dissimilar Algorithms for Image Learning and Correction as a Means of Fault-Finding
title_sort comparative model efficiency analysis based on dissimilar algorithms for image learning and correction as a means of fault finding
topic artefact
CT scanner
metal artefact
ring artefact
machine learning
image learning
url https://www.mdpi.com/2227-7390/13/11/1835
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AT tshepokukuni comparativemodelefficiencyanalysisbasedondissimilaralgorithmsforimagelearningandcorrectionasameansoffaultfinding
AT benkotze comparativemodelefficiencyanalysisbasedondissimilaralgorithmsforimagelearningandcorrectionasameansoffaultfinding
AT lepekolalenkoe comparativemodelefficiencyanalysisbasedondissimilaralgorithmsforimagelearningandcorrectionasameansoffaultfinding