Information extracted from aerial photographs has found applications in a wide range of areas including urban planning, crop and forest management, disaster relief, and climate modeling. At present, much of the extraction is still performed by human experts, making the process slow, costly, and error prone. The goal of this thesis is to develop methods for automatically extracting the locations of objects such as roads, buildings, and trees directly from aerial images. We investigate the use of machine learning methods trained on aligned aerial images and possibly outdated maps for labeling the pixels of an aerial image with semantic labels. We show how deep neural networks implemented on modern GPUs can be used to efficiently...
Extraction of roads from high-resolution aerial images with a high degree of accuracy is a prerequis...
Very high resolution (VHR) remote sensing imagery has been used for land cover classification, and i...
Remote sensing imagery combined with deep learning strategies is often regarded as anideal solution ...
Information extracted from aerial photographs has found applications in a wide range of areas inclu...
This thesis presents a brief introduction to aerial road detection and semantic segmentation of imag...
This thesis presents a brief introduction to aerial road detection and semantic segmentation of imag...
This is the CITY-OSM dataset used in the journal publication "Learning Aerial Image Segmentation Fro...
For centuries cartographers have segmented and labeled the surface of the earth onto analog and digi...
Road recognition in aerial images is an important area of research, because having access to up-to-d...
Infrastructure and traffic monitoring are two of the most innovative applications for automatically ...
In this paper, we examine the use of machine learning to improve a rooftop detection process, which ...
In this paper, we examine the use of machine learning to improve a rooftop detection process, one st...
The detection of buildings in the city is essential in several geospatial domains and for decision-m...
Abstract. We propose a method to label roads in aerial images and extract a topologically correct ro...
A goal of many image analysis, image understanding and computer vision problems is the delineation o...
Extraction of roads from high-resolution aerial images with a high degree of accuracy is a prerequis...
Very high resolution (VHR) remote sensing imagery has been used for land cover classification, and i...
Remote sensing imagery combined with deep learning strategies is often regarded as anideal solution ...
Information extracted from aerial photographs has found applications in a wide range of areas inclu...
This thesis presents a brief introduction to aerial road detection and semantic segmentation of imag...
This thesis presents a brief introduction to aerial road detection and semantic segmentation of imag...
This is the CITY-OSM dataset used in the journal publication "Learning Aerial Image Segmentation Fro...
For centuries cartographers have segmented and labeled the surface of the earth onto analog and digi...
Road recognition in aerial images is an important area of research, because having access to up-to-d...
Infrastructure and traffic monitoring are two of the most innovative applications for automatically ...
In this paper, we examine the use of machine learning to improve a rooftop detection process, which ...
In this paper, we examine the use of machine learning to improve a rooftop detection process, one st...
The detection of buildings in the city is essential in several geospatial domains and for decision-m...
Abstract. We propose a method to label roads in aerial images and extract a topologically correct ro...
A goal of many image analysis, image understanding and computer vision problems is the delineation o...
Extraction of roads from high-resolution aerial images with a high degree of accuracy is a prerequis...
Very high resolution (VHR) remote sensing imagery has been used for land cover classification, and i...
Remote sensing imagery combined with deep learning strategies is often regarded as anideal solution ...