The aim of this thesis was to prepare a training data set for traffic sign detection using generative neural networks. The solution uses a modified U-Net architecture and several experiments with the application of styles using AdaIN layers as in the StyleGAN model have been conducted. By extending the real GTSDB data set with the generated images, mean average precision of 80.36 % has been achieved, which yields an improvement of 19.27 % compared to the mean average precision of the detection model trained on real data only
For several years, much research has focused on the importance of traffic sign recognition systems, ...
Traffic sign detection is one of the critical technologies in the field of intelligent transportatio...
In a stride toward autonomous driving, this project aims to craft a deep learning system for detecti...
The goal of this thesis was to extend a dataset for traffic sign detection. The solution was based o...
To deal with the richness in visual appearance variation found in real-world data, we propose to syn...
We propose a method for construction of a cascaded traf-fic sign detector. Viola et al. have propose...
Traffic sign detection systems constitute a key component in trending real-world applications such a...
The thesis focuses on traffic sign detection and traffic lights detection in view with utilization c...
Traffic sign identification using camera images from vehicles plays a critical role in autonomous dr...
In this thesis the convolutional neural networks application for traffic sign recognition is analyze...
Convolutional Neural Networks (CNN) achieves perfection in traffic sign identification with enough a...
Convolutional Neural Networks (CNN) achieves perfection in traffic sign identification with enough a...
Image recognition and understanding is one of the most interesting fields of researches. Its main id...
This work deals with the object detection using deep neural networks. As part of the solution, I mod...
This thesis deals with the traffic sign detection problematics using modern techniques in image proc...
For several years, much research has focused on the importance of traffic sign recognition systems, ...
Traffic sign detection is one of the critical technologies in the field of intelligent transportatio...
In a stride toward autonomous driving, this project aims to craft a deep learning system for detecti...
The goal of this thesis was to extend a dataset for traffic sign detection. The solution was based o...
To deal with the richness in visual appearance variation found in real-world data, we propose to syn...
We propose a method for construction of a cascaded traf-fic sign detector. Viola et al. have propose...
Traffic sign detection systems constitute a key component in trending real-world applications such a...
The thesis focuses on traffic sign detection and traffic lights detection in view with utilization c...
Traffic sign identification using camera images from vehicles plays a critical role in autonomous dr...
In this thesis the convolutional neural networks application for traffic sign recognition is analyze...
Convolutional Neural Networks (CNN) achieves perfection in traffic sign identification with enough a...
Convolutional Neural Networks (CNN) achieves perfection in traffic sign identification with enough a...
Image recognition and understanding is one of the most interesting fields of researches. Its main id...
This work deals with the object detection using deep neural networks. As part of the solution, I mod...
This thesis deals with the traffic sign detection problematics using modern techniques in image proc...
For several years, much research has focused on the importance of traffic sign recognition systems, ...
Traffic sign detection is one of the critical technologies in the field of intelligent transportatio...
In a stride toward autonomous driving, this project aims to craft a deep learning system for detecti...