The main goal of this paper is to detect roads from aerial imagery recorded by drones. To achieve this, we propose a modification of SegNet, a deep fully convolutional neural network for image segmentation. In order to train this neural network, we have put together a database containing videos of roads from the point of view of a small commercial drone. Additionally, we have developed an image annotation tool based on the watershed technique, in order to perform a semi-automatic labeling of the videos in this database. The experimental results using our modified version of SegNet show a big improvement on the performance of the neural network when using aerial imagery, obtaining over 90% accuracy
There are numerous pre-Trained Convolutional Neural Networks (CNN) introduced in the literature, suc...
Object segmentation of remotely-sensed aerial (or very-high resolution, VHS) images and satellite (o...
International audienceRoad detection in high-resolution satellite images is an important and popular...
The main goal of this paper is to detect roads from aerial imagery recorded by drones. To achieve th...
Abstract: Image segmentation is crucial for computer vision. Visual segmentation simplifies image an...
Obtaining near real-time road features is very important in emergent situations like flood and geolo...
Road recognition in aerial images is an important area of research, because having access to up-to-d...
This master's thesis deals with a vehicle detector based on the convolutional neural network and sce...
Mapping road networks is currently both expensive and labor-intensive. High-resolution aerial imager...
Remote sensing imagery combined with deep learning strategies is often regarded as anideal solution ...
Road extraction in imagery acquired by low altitude remote sensing (LARS) carried out using an unman...
This thesis presents a brief introduction to aerial road detection and semantic segmentation of imag...
Vehicle detection in aerial images is an important and challenging task. Traditionally, many target ...
Infrastructure and traffic monitoring are two of the most innovative applications for automatically ...
The purpose of this paper is to implement a method to allow delivery UAV/drones to recognise their p...
There are numerous pre-Trained Convolutional Neural Networks (CNN) introduced in the literature, suc...
Object segmentation of remotely-sensed aerial (or very-high resolution, VHS) images and satellite (o...
International audienceRoad detection in high-resolution satellite images is an important and popular...
The main goal of this paper is to detect roads from aerial imagery recorded by drones. To achieve th...
Abstract: Image segmentation is crucial for computer vision. Visual segmentation simplifies image an...
Obtaining near real-time road features is very important in emergent situations like flood and geolo...
Road recognition in aerial images is an important area of research, because having access to up-to-d...
This master's thesis deals with a vehicle detector based on the convolutional neural network and sce...
Mapping road networks is currently both expensive and labor-intensive. High-resolution aerial imager...
Remote sensing imagery combined with deep learning strategies is often regarded as anideal solution ...
Road extraction in imagery acquired by low altitude remote sensing (LARS) carried out using an unman...
This thesis presents a brief introduction to aerial road detection and semantic segmentation of imag...
Vehicle detection in aerial images is an important and challenging task. Traditionally, many target ...
Infrastructure and traffic monitoring are two of the most innovative applications for automatically ...
The purpose of this paper is to implement a method to allow delivery UAV/drones to recognise their p...
There are numerous pre-Trained Convolutional Neural Networks (CNN) introduced in the literature, suc...
Object segmentation of remotely-sensed aerial (or very-high resolution, VHS) images and satellite (o...
International audienceRoad detection in high-resolution satellite images is an important and popular...