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Sensing and Detection of Traffic Signs Using CNNs: An Assessment on Their Performance

Traffic sign detection systems constitute a key component in trending real-world applications such as autonomous driving and driver safety and assistance. In recent years, many learning systems have been used to help detect traffic signs more accurately, such as ResNet, Vgg, Squeeznet, and DenseNet,...

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Autores principales: Canese, Lorenzo, Cardarilli, Gian Carlo, Di Nunzio, Luca, Fazzolari, Rocco, Famil Ghadakchi, Hamed, Re, Marco, Spanò, Sergio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9693635/
https://www.ncbi.nlm.nih.gov/pubmed/36433431
http://dx.doi.org/10.3390/s22228830
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author Canese, Lorenzo
Cardarilli, Gian Carlo
Di Nunzio, Luca
Fazzolari, Rocco
Famil Ghadakchi, Hamed
Re, Marco
Spanò, Sergio
author_facet Canese, Lorenzo
Cardarilli, Gian Carlo
Di Nunzio, Luca
Fazzolari, Rocco
Famil Ghadakchi, Hamed
Re, Marco
Spanò, Sergio
author_sort Canese, Lorenzo
collection PubMed
description Traffic sign detection systems constitute a key component in trending real-world applications such as autonomous driving and driver safety and assistance. In recent years, many learning systems have been used to help detect traffic signs more accurately, such as ResNet, Vgg, Squeeznet, and DenseNet, but which of these systems can perform better than the others is debatable. They must be examined carefully and under the same conditions. To check the system under the same conditions, you must first have the same database structure. Moreover, the practice of training under the same number of epochs should be the same. Other points to consider are the language in which the coding operation was performed as well as the method of calling the training system, which should be the same. As a result, under these conditions, it can be said that the comparison between different education systems has been done under equal conditions, and the result of this analogy will be valid. In this article, traffic sign detection was done using AlexNet and XresNet 50 training methods, which had not been used until now. Then, with the implementation of ResNet 18, 34, and 50, DenseNet 121, 169, and 201, Vgg 16_bn and Vgg19_bn, AlexNet, SqueezeNet1_0, and SqueezeNet1_1 training methods under completely the same conditions. The results are compared with each other, and finally, the best ones for use in detecting traffic signs are introduced. The experimental results showed that, considering parameters train loss, valid loss, accuracy, error rate and Time, three types of CNN learning models Vgg 16_bn, Vgg19_bn and, AlexNet performed better for the intended purpose. As a result, these three types of learning models can be considered for further studies.
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spelling pubmed-96936352022-11-26 Sensing and Detection of Traffic Signs Using CNNs: An Assessment on Their Performance Canese, Lorenzo Cardarilli, Gian Carlo Di Nunzio, Luca Fazzolari, Rocco Famil Ghadakchi, Hamed Re, Marco Spanò, Sergio Sensors (Basel) Article Traffic sign detection systems constitute a key component in trending real-world applications such as autonomous driving and driver safety and assistance. In recent years, many learning systems have been used to help detect traffic signs more accurately, such as ResNet, Vgg, Squeeznet, and DenseNet, but which of these systems can perform better than the others is debatable. They must be examined carefully and under the same conditions. To check the system under the same conditions, you must first have the same database structure. Moreover, the practice of training under the same number of epochs should be the same. Other points to consider are the language in which the coding operation was performed as well as the method of calling the training system, which should be the same. As a result, under these conditions, it can be said that the comparison between different education systems has been done under equal conditions, and the result of this analogy will be valid. In this article, traffic sign detection was done using AlexNet and XresNet 50 training methods, which had not been used until now. Then, with the implementation of ResNet 18, 34, and 50, DenseNet 121, 169, and 201, Vgg 16_bn and Vgg19_bn, AlexNet, SqueezeNet1_0, and SqueezeNet1_1 training methods under completely the same conditions. The results are compared with each other, and finally, the best ones for use in detecting traffic signs are introduced. The experimental results showed that, considering parameters train loss, valid loss, accuracy, error rate and Time, three types of CNN learning models Vgg 16_bn, Vgg19_bn and, AlexNet performed better for the intended purpose. As a result, these three types of learning models can be considered for further studies. MDPI 2022-11-15 /pmc/articles/PMC9693635/ /pubmed/36433431 http://dx.doi.org/10.3390/s22228830 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Canese, Lorenzo
Cardarilli, Gian Carlo
Di Nunzio, Luca
Fazzolari, Rocco
Famil Ghadakchi, Hamed
Re, Marco
Spanò, Sergio
Sensing and Detection of Traffic Signs Using CNNs: An Assessment on Their Performance
title Sensing and Detection of Traffic Signs Using CNNs: An Assessment on Their Performance
title_full Sensing and Detection of Traffic Signs Using CNNs: An Assessment on Their Performance
title_fullStr Sensing and Detection of Traffic Signs Using CNNs: An Assessment on Their Performance
title_full_unstemmed Sensing and Detection of Traffic Signs Using CNNs: An Assessment on Their Performance
title_short Sensing and Detection of Traffic Signs Using CNNs: An Assessment on Their Performance
title_sort sensing and detection of traffic signs using cnns: an assessment on their performance
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9693635/
https://www.ncbi.nlm.nih.gov/pubmed/36433431
http://dx.doi.org/10.3390/s22228830
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