The importance of road characteristics has been highlighted, as road characteristics are fundamental structures established to support many transportation-relevant services. However, there is still huge room for improvement in terms of types and performance of road characteristics detection. With the advantage of geographically tiled maps with high update rates, remarkable accessibility, and increasing availability, this paper proposes a novel simple deep-learning-based approach, namely joint convolutional neural networks (CNNs) adopting adaptive squares with combination rules to detect road characteristics from roadmap tiles. The proposed joint CNNs are responsible for the foreground and background image classification and various types of...
Road detection from images is a challenging task in computer vision. Previous methods are not robust...
The road network plays an important role in the modern traffic system; as development occurs, the ro...
deep learning, context priming Abstract: Classifying single image patches is important in many diffe...
Inferring road attributes such as lane count and road type from satellite imagery is challenging. Of...
Road detection from images is a key task in autonomous driving. The recent advent of deep learning (...
Inferring road attributes such as lane count and road type from satellite imagery is challenging. Of...
Road surface detection is important for safely driving autonomous vehicles. This is because the know...
In recent years, a significant amount of attention has been given to the development of robust road ...
This paper presents a novel work for classification of road surfaces using deep learning method-base...
Automatic extraction of road information based on data-driven methods is significant for various pra...
Road scene segmentation is important in computer vision for different applications such as autonomou...
Functional classification of the road is important to the construction of sustainable transport syst...
Road network maps facilitate a great number of applications in our everyday life. However, their aut...
This paper addresses the problem of high-level road modeling for urban environments. Current approac...
In this study, various organizations that have participated in several road path-detecting experimen...
Road detection from images is a challenging task in computer vision. Previous methods are not robust...
The road network plays an important role in the modern traffic system; as development occurs, the ro...
deep learning, context priming Abstract: Classifying single image patches is important in many diffe...
Inferring road attributes such as lane count and road type from satellite imagery is challenging. Of...
Road detection from images is a key task in autonomous driving. The recent advent of deep learning (...
Inferring road attributes such as lane count and road type from satellite imagery is challenging. Of...
Road surface detection is important for safely driving autonomous vehicles. This is because the know...
In recent years, a significant amount of attention has been given to the development of robust road ...
This paper presents a novel work for classification of road surfaces using deep learning method-base...
Automatic extraction of road information based on data-driven methods is significant for various pra...
Road scene segmentation is important in computer vision for different applications such as autonomou...
Functional classification of the road is important to the construction of sustainable transport syst...
Road network maps facilitate a great number of applications in our everyday life. However, their aut...
This paper addresses the problem of high-level road modeling for urban environments. Current approac...
In this study, various organizations that have participated in several road path-detecting experimen...
Road detection from images is a challenging task in computer vision. Previous methods are not robust...
The road network plays an important role in the modern traffic system; as development occurs, the ro...
deep learning, context priming Abstract: Classifying single image patches is important in many diffe...