For urban traffic, traffic accidents are the most direct and serious risk to people’s lives, and rapid recognition and warning of traffic accidents is an important remedy to reduce their harmful effects. However, research scholars are often confronted with the problem of scarce and difficult-to-collect accident data resources for traffic accident scenarios. Therefore, in this paper, a traffic data generation model based on Generative Adversarial Networks (GAN) is developed. To make GAN applicable to non-graphical data, we improve the generator network structure of the model and used the generated model to resample the original data to obtain new traffic accident data. By constructing an adversarial neural network model, we generate a large ...
Machine-learning technology powers many aspects of modern society. Compared to the conventional mach...
Engineers and researchers in the automobile industry have tried to design and build safer automobile...
The prediction of traffic accidents in urban networks is one of the key future theme in the areas of...
The continuous development of sensors and the Internet of Things has produced a large amount of traf...
Private automobiles are still a widely prevalent mode of transportation. Subsequently, traffic conge...
Traffic accidents are a major concern worldwide, since they have a significant impact on people’s sa...
Statistics affirm that almost half of deaths in traffic accidents were vulnerable road users, such a...
With the rapid development of urbanization and public transportation system, the number of traffic a...
Most machine learning algorithms only have a good recognition rate on balanced datasets. However, in...
This study proposes an Artificial Neural Network (ANN) model and a Genetic Algorithm (GA) model to e...
This study proposes an Artificial Neural Network (ANN) model and a Genetic Algorithm (GA) ...
This study investigates the power of deep learning in predicting the severity of injuries when accid...
Real-time crash risk prediction models aim to identify pre-crash conditions as part of active traffi...
AKGUNGOR, ALI PAYIDAR/0000-0003-0669-5715; DOGAN, Erdem/0000-0001-7802-641XWOS: 000267724800007This ...
The goal of this thesis was to extend a dataset for traffic sign detection. The solution was based o...
Machine-learning technology powers many aspects of modern society. Compared to the conventional mach...
Engineers and researchers in the automobile industry have tried to design and build safer automobile...
The prediction of traffic accidents in urban networks is one of the key future theme in the areas of...
The continuous development of sensors and the Internet of Things has produced a large amount of traf...
Private automobiles are still a widely prevalent mode of transportation. Subsequently, traffic conge...
Traffic accidents are a major concern worldwide, since they have a significant impact on people’s sa...
Statistics affirm that almost half of deaths in traffic accidents were vulnerable road users, such a...
With the rapid development of urbanization and public transportation system, the number of traffic a...
Most machine learning algorithms only have a good recognition rate on balanced datasets. However, in...
This study proposes an Artificial Neural Network (ANN) model and a Genetic Algorithm (GA) model to e...
This study proposes an Artificial Neural Network (ANN) model and a Genetic Algorithm (GA) ...
This study investigates the power of deep learning in predicting the severity of injuries when accid...
Real-time crash risk prediction models aim to identify pre-crash conditions as part of active traffi...
AKGUNGOR, ALI PAYIDAR/0000-0003-0669-5715; DOGAN, Erdem/0000-0001-7802-641XWOS: 000267724800007This ...
The goal of this thesis was to extend a dataset for traffic sign detection. The solution was based o...
Machine-learning technology powers many aspects of modern society. Compared to the conventional mach...
Engineers and researchers in the automobile industry have tried to design and build safer automobile...
The prediction of traffic accidents in urban networks is one of the key future theme in the areas of...