For several years, much research has focused on the importance of traffic sign recognition systems, which have played a very important role in road safety. Researchers have exploited the techniques of machine learning, deep learning, and image processing to carry out their research successfully. The new and recent research on road sign classification and recognition systems is the result of the use of deep learning-based architectures such as the convolutional neural network (CNN) architectures. In this research work, the goal was to achieve a CNN model that is lightweight and easily implemented for an embedded application and with excellent classification accuracy. We choose to work with an improved network LeNet-5 model for the classifica...
Traffic sign classification in the traffic context is a crucial task for Intelligent Transportation ...
Classification of road signs has been studied for many years and very promising results have been ac...
Problems are commonly encountered in image classification tasks within the field of computer vision....
Recognizing road signs is one of the most important steps drivers can take to help prevent accidents...
Background: Traffic Sign Recognition (TSR) is particularly useful for novice driversand self-driving...
Vision-based traffic sign detection plays a crucial role in intelligent transportation systems. Rece...
The paper presented here describes traffic signs classification method based on a convolutional neur...
Traffic sign detection is one of the critical technologies in the field of intelligent transportatio...
Traffic signs are a mandatory feature of road traffic regulations worldwide. They are responsible fo...
In this paper about Big Data we have experimented with the known neural network for image classifica...
In this thesis the convolutional neural networks application for traffic sign recognition is analyze...
Machine Learning (ML) involves making a machine able to learn and take decisions on real-life proble...
Traffic symbols are crucial part of the road infrastructure which are erected at the side of the roa...
Traffic sign recognition plays an important role in intelligent transportation systems. Motivated by...
Traffic sign classification is a prime issue for autonomous platform industries such as autonomous c...
Traffic sign classification in the traffic context is a crucial task for Intelligent Transportation ...
Classification of road signs has been studied for many years and very promising results have been ac...
Problems are commonly encountered in image classification tasks within the field of computer vision....
Recognizing road signs is one of the most important steps drivers can take to help prevent accidents...
Background: Traffic Sign Recognition (TSR) is particularly useful for novice driversand self-driving...
Vision-based traffic sign detection plays a crucial role in intelligent transportation systems. Rece...
The paper presented here describes traffic signs classification method based on a convolutional neur...
Traffic sign detection is one of the critical technologies in the field of intelligent transportatio...
Traffic signs are a mandatory feature of road traffic regulations worldwide. They are responsible fo...
In this paper about Big Data we have experimented with the known neural network for image classifica...
In this thesis the convolutional neural networks application for traffic sign recognition is analyze...
Machine Learning (ML) involves making a machine able to learn and take decisions on real-life proble...
Traffic symbols are crucial part of the road infrastructure which are erected at the side of the roa...
Traffic sign recognition plays an important role in intelligent transportation systems. Motivated by...
Traffic sign classification is a prime issue for autonomous platform industries such as autonomous c...
Traffic sign classification in the traffic context is a crucial task for Intelligent Transportation ...
Classification of road signs has been studied for many years and very promising results have been ac...
Problems are commonly encountered in image classification tasks within the field of computer vision....