APA Style
Ayachi, R. , Ayachi, R. Afif, M. , Afif, M. Said, Y. , & Said, Y. (2021). Understanding Traffic Signs by an Intelligent Advanced Driving Assistance System for Smart Vehicles.
Current Research in Public Health, 1(1), 31-38.
https://doi.org/10.31586/jaibd.2021.148
ACS Style
Ayachi, R. ; Ayachi, R. Afif, M. ; Afif, M. Said, Y. ; Said, Y. Understanding Traffic Signs by an Intelligent Advanced Driving Assistance System for Smart Vehicles.
Current Research in Public Health 2021 1(1), 31-38.
https://doi.org/10.31586/jaibd.2021.148
Chicago/Turabian Style
Ayachi, Riadh, Riadh Ayachi. Mouna Afif, Mouna Afif. Yahia Said, and Yahia Said. 2021. "Understanding Traffic Signs by an Intelligent Advanced Driving Assistance System for Smart Vehicles".
Current Research in Public Health 1, no. 1: 31-38.
https://doi.org/10.31586/jaibd.2021.148
AMA Style
Ayachi R, Ayachi RAfif M, Afif MSaid Y, Said Y. Understanding Traffic Signs by an Intelligent Advanced Driving Assistance System for Smart Vehicles.
Current Research in Public Health. 2021; 1(1):31-38.
https://doi.org/10.31586/jaibd.2021.148
@Article{crph148,
AUTHOR = {Ayachi, Riadh and Afif, Mouna and Said, Yahia and Abdelali, Abdessalem Ben},
TITLE = {Understanding Traffic Signs by an Intelligent Advanced Driving Assistance System for Smart Vehicles},
JOURNAL = {Current Research in Public Health},
VOLUME = {1},
YEAR = {2021},
NUMBER = {1},
PAGES = {31-38},
URL = {/10.31586/jaibd-1-1-310.31586/jaibd/1/1/3},
ISSN = {2831-5162},
DOI = {10.31586/jaibd.2021.148},
ABSTRACT = {Recent technologies have made life smarter. vehicles are vital components in daily life that are getting smarter for a safer environment. Advanced Driving Assistance Systems (ADAS) are widely used in today's vehicles. It has been a revolutionary approach to make roads safer by assisting the driver in difficult situations like collusion, or assistance in respecting road rules. ADAS is composed of a huge number of sensors and processing units to provide a complete overview of the surrounding objects to the driver. In this paper, we introduce a road signs classifier for an ADAS to recognize and understand traffic signs. This classifier is based on a deep learning technique, and, in particular, it uses Convolutional Neural Networks (CNN). The proposed approach is composed of two stages. The first stage is a data preprocessing technique to filter and enhance the quality of the input images to reduce the processing time and improve the recognition accuracy. The second stage is a convolutional CNN model with a skip connection that allows passing semantic features to the top of the network in order to allow for better recognition of traffic signs. Experiments have proved the performance of the CNN model for traffic sign classification with a correct recognition rate of 99.75% on the German traffic sign recognition benchmark GTSRB dataset.},
}
TY - JOUR
AU - Ayachi, Riadh
AU - Afif, Mouna
AU - Said, Yahia
AU - Abdelali, Abdessalem Ben
TI - Understanding Traffic Signs by an Intelligent Advanced Driving Assistance System for Smart Vehicles
T2 - Current Research in Public Health
PY - 2021
VL - 1
IS - 1
SN - 2831-5162
SP - 31
EP - 38
UR - /10.31586/jaibd-1-1-310.31586/jaibd/1/1/3
AB - Recent technologies have made life smarter. vehicles are vital components in daily life that are getting smarter for a safer environment. Advanced Driving Assistance Systems (ADAS) are widely used in today's vehicles. It has been a revolutionary approach to make roads safer by assisting the driver in difficult situations like collusion, or assistance in respecting road rules. ADAS is composed of a huge number of sensors and processing units to provide a complete overview of the surrounding objects to the driver. In this paper, we introduce a road signs classifier for an ADAS to recognize and understand traffic signs. This classifier is based on a deep learning technique, and, in particular, it uses Convolutional Neural Networks (CNN). The proposed approach is composed of two stages. The first stage is a data preprocessing technique to filter and enhance the quality of the input images to reduce the processing time and improve the recognition accuracy. The second stage is a convolutional CNN model with a skip connection that allows passing semantic features to the top of the network in order to allow for better recognition of traffic signs. Experiments have proved the performance of the CNN model for traffic sign classification with a correct recognition rate of 99.75% on the German traffic sign recognition benchmark GTSRB dataset.
DO - Understanding Traffic Signs by an Intelligent Advanced Driving Assistance System for Smart Vehicles
TI - 10.31586/jaibd.2021.148
ER -