Even though, deep learning techniques demonstrate an outstanding performance in various applications, success of deep learning techniques depends upon appropriately setting their parameters in achieving most accurate results. Therefore, in this paper, a novel Particle Swarm Optimization (PSO) based technique is introduced to optimize a Fully Convolutional Network (FCN) to recognize road safety attributes. The proposed technique optimizes parameters such as number of convolution layers, activation function, pooling type, attribute image size, number of iterations and learning algorithms. The proposed technique has been evaluated using a custom dataset prepared by extracting images from video data provided by our industry partner. The evaluat...
There are numerous pre-Trained Convolutional Neural Networks (CNN) introduced in the literature, suc...
Lane detection is a crucial element for advanced driver assistance systems (ADAS) and fully autonom...
A new convolutional deep feedforward network (C-DFN) is proposed to detect vulnerable road users at ...
Even though, deep learning techniques demonstrate an outstanding performance in various applications...
Detection of roadside safety attributes plays an important role in road rating and improving road sa...
Automatic detection of road safety attributes is an important step in designing a reliable road safe...
Automatic assessment of road safety and conditions is essential for improving road infrastructure an...
The manual systems for road safety are inefficient, very time consuming and prone to error. Automate...
Convolutional Neural Networks (CNNs) have demonstrated great potential in complex image classificati...
Road safety assessment is one of the most important parts of road transport safety management. When ...
This paper explores the vehicle detection problem and introduces an improved regional convolution ne...
Deep learning techniques, especially convolutional neural networks, have shown good image processing...
This study investigates the power of deep learning in predicting the severity of injuries when accid...
The continuous development of sensors and the Internet of Things has produced a large amount of traf...
A system to effectively monitor and evaluate a damaged road on the quality of the road surface. This...
There are numerous pre-Trained Convolutional Neural Networks (CNN) introduced in the literature, suc...
Lane detection is a crucial element for advanced driver assistance systems (ADAS) and fully autonom...
A new convolutional deep feedforward network (C-DFN) is proposed to detect vulnerable road users at ...
Even though, deep learning techniques demonstrate an outstanding performance in various applications...
Detection of roadside safety attributes plays an important role in road rating and improving road sa...
Automatic detection of road safety attributes is an important step in designing a reliable road safe...
Automatic assessment of road safety and conditions is essential for improving road infrastructure an...
The manual systems for road safety are inefficient, very time consuming and prone to error. Automate...
Convolutional Neural Networks (CNNs) have demonstrated great potential in complex image classificati...
Road safety assessment is one of the most important parts of road transport safety management. When ...
This paper explores the vehicle detection problem and introduces an improved regional convolution ne...
Deep learning techniques, especially convolutional neural networks, have shown good image processing...
This study investigates the power of deep learning in predicting the severity of injuries when accid...
The continuous development of sensors and the Internet of Things has produced a large amount of traf...
A system to effectively monitor and evaluate a damaged road on the quality of the road surface. This...
There are numerous pre-Trained Convolutional Neural Networks (CNN) introduced in the literature, suc...
Lane detection is a crucial element for advanced driver assistance systems (ADAS) and fully autonom...
A new convolutional deep feedforward network (C-DFN) is proposed to detect vulnerable road users at ...