Improving the transfer learning performances in the classification of the automotive traffic roads signs

This paper represents a study for the realization of a system based on Artificial Intelligence, which allows the recognition of traffic road signs in an intelligent way, and also demonstrates the performance of Transfer Learning for object classification in general. When systems are trained on the a...

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Main Authors: Barodi Anass, Bajit Abderrahim, Benbrahim Mohammed, Tamtaoui Ahmed
Format: Article
Language:English
Published: EDP Sciences 2021-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/10/e3sconf_icies2020_00064.pdf
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spelling doaj-fee91875d8c847e68287b2477a55b9cb2021-02-18T10:35:50ZengEDP SciencesE3S Web of Conferences2267-12422021-01-012340006410.1051/e3sconf/202123400064e3sconf_icies2020_00064Improving the transfer learning performances in the classification of the automotive traffic roads signsBarodi Anass0Bajit Abderrahim1Benbrahim Mohammed2Tamtaoui Ahmed3Laboratory of Advanced Systems Engineering ISA, National School of Applied Sciences, Ibn Tofail UniversityLaboratory of Advanced Systems Engineering ISA, National School of Applied Sciences, Ibn Tofail UniversityLaboratory of Advanced Systems Engineering ISA, National School of Applied Sciences, Ibn Tofail UniversityNational Institute of Posts and Telecommunications (INPT-Rabat), SC Department, Mohammed V UniversityThis paper represents a study for the realization of a system based on Artificial Intelligence, which allows the recognition of traffic road signs in an intelligent way, and also demonstrates the performance of Transfer Learning for object classification in general. When systems are trained on the aspects of human visualization (HVS), which helps or generates the same decisions, the construct robust and efficient systems. This allows us to avoid many environmental risks, both for weather conditions, such as cloudy or rainy weather that causes obscured vision of signs, but the main objective is to avoid all road risks that are dangerous to achieve road safety, such as accidents due to non-compliance with traffic rules, both for vehicles and passengers. However, simply collecting road signs in different places does not solve the problem, an intelligent system for classifying road signs is needed to improve the safety of people in its environment. This study proposed a traffic road sign classification system that extracts visual characteristics from a Convolution Neural Network (CNN) classification model. This model aims to assign a class to the image of the road sign through the classifier with the most efficient optimized. Then the evaluation of its effectiveness according to several criteria, using the Confusion Matrix and the classification report, with an in-depth analysis of the results obtained by the images that are taken from the urban world. The results obtained by the system are encouraging in comparison with the systems developed in the scientific literature, for example, the Advanced Driving Assistance Systems (ADAS) of the sector automobile.https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/10/e3sconf_icies2020_00064.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Barodi Anass
Bajit Abderrahim
Benbrahim Mohammed
Tamtaoui Ahmed
spellingShingle Barodi Anass
Bajit Abderrahim
Benbrahim Mohammed
Tamtaoui Ahmed
Improving the transfer learning performances in the classification of the automotive traffic roads signs
E3S Web of Conferences
author_facet Barodi Anass
Bajit Abderrahim
Benbrahim Mohammed
Tamtaoui Ahmed
author_sort Barodi Anass
title Improving the transfer learning performances in the classification of the automotive traffic roads signs
title_short Improving the transfer learning performances in the classification of the automotive traffic roads signs
title_full Improving the transfer learning performances in the classification of the automotive traffic roads signs
title_fullStr Improving the transfer learning performances in the classification of the automotive traffic roads signs
title_full_unstemmed Improving the transfer learning performances in the classification of the automotive traffic roads signs
title_sort improving the transfer learning performances in the classification of the automotive traffic roads signs
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2021-01-01
description This paper represents a study for the realization of a system based on Artificial Intelligence, which allows the recognition of traffic road signs in an intelligent way, and also demonstrates the performance of Transfer Learning for object classification in general. When systems are trained on the aspects of human visualization (HVS), which helps or generates the same decisions, the construct robust and efficient systems. This allows us to avoid many environmental risks, both for weather conditions, such as cloudy or rainy weather that causes obscured vision of signs, but the main objective is to avoid all road risks that are dangerous to achieve road safety, such as accidents due to non-compliance with traffic rules, both for vehicles and passengers. However, simply collecting road signs in different places does not solve the problem, an intelligent system for classifying road signs is needed to improve the safety of people in its environment. This study proposed a traffic road sign classification system that extracts visual characteristics from a Convolution Neural Network (CNN) classification model. This model aims to assign a class to the image of the road sign through the classifier with the most efficient optimized. Then the evaluation of its effectiveness according to several criteria, using the Confusion Matrix and the classification report, with an in-depth analysis of the results obtained by the images that are taken from the urban world. The results obtained by the system are encouraging in comparison with the systems developed in the scientific literature, for example, the Advanced Driving Assistance Systems (ADAS) of the sector automobile.
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/10/e3sconf_icies2020_00064.pdf
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