In this paper, we address the problem of localizing a camera-equipped Micro Aerial Vehicle (MAV) flying in urban streets at low altitudes. An appearance-based global positioning system to localize MAVs with respect to the surrounding buildings is introduced. We rely on an air-ground image matching algorithm to search the airborne image of the MAV within a ground-level Street View image database and to detect image matching points. Based on the image matching points, we infer the global position of the MAV by back-projecting the corresponding image points onto a cadastral 3D city model. Furthermore, we describe an algorithm to track the position of the flying vehicle over several frames and to correct the accumulated drift of the visual odom...
Abstract—This paper presents a method for localizing a ground-based object when imaged from a small ...
The localization of autonomous ground vehicles in dense urban environments poses a challenge. Appli...
The localization of autonomous ground vehicles in dense urban environments poses a challenge. Appli...
In this paper, we address the problem of globally localizing and tracking the pose of a camera-equip...
Abstract—We tackle the problem of globally localizing a camera-equipped micro aerial vehicle flying ...
We tackle the problem of globally localizing a camera-equipped micro aerial vehicle flying within ur...
This paper presents a dataset recorded on-board a camera-equipped micro aerial vehicle flying within...
Abstract—We propose a new method for the localization of a Micro Aerial Vehicle (MAV) with respect t...
We propose a new method for the localization of a Micro Aerial Vehicle (MAV) with respect to a groun...
The combination of photogrammetric aerial and terrestrial recording methods can provide new opportun...
The combination of photogrammetric aerial and terrestrial recording methods can provide new opportun...
This Master's Thesis describes the developments on robust localization, mapping and detection algori...
The combination of photogrammetric aerial and terrestrial recording methods can provide new opportun...
Escola Tècnica Superior d’Enginyeria Industrial de Barcelona (ETSEIB): End of Master's Degree Projec...
This paper presents a dataset recorded on-board a camera-equipped micro aerial vehicle flying within...
Abstract—This paper presents a method for localizing a ground-based object when imaged from a small ...
The localization of autonomous ground vehicles in dense urban environments poses a challenge. Appli...
The localization of autonomous ground vehicles in dense urban environments poses a challenge. Appli...
In this paper, we address the problem of globally localizing and tracking the pose of a camera-equip...
Abstract—We tackle the problem of globally localizing a camera-equipped micro aerial vehicle flying ...
We tackle the problem of globally localizing a camera-equipped micro aerial vehicle flying within ur...
This paper presents a dataset recorded on-board a camera-equipped micro aerial vehicle flying within...
Abstract—We propose a new method for the localization of a Micro Aerial Vehicle (MAV) with respect t...
We propose a new method for the localization of a Micro Aerial Vehicle (MAV) with respect to a groun...
The combination of photogrammetric aerial and terrestrial recording methods can provide new opportun...
The combination of photogrammetric aerial and terrestrial recording methods can provide new opportun...
This Master's Thesis describes the developments on robust localization, mapping and detection algori...
The combination of photogrammetric aerial and terrestrial recording methods can provide new opportun...
Escola Tècnica Superior d’Enginyeria Industrial de Barcelona (ETSEIB): End of Master's Degree Projec...
This paper presents a dataset recorded on-board a camera-equipped micro aerial vehicle flying within...
Abstract—This paper presents a method for localizing a ground-based object when imaged from a small ...
The localization of autonomous ground vehicles in dense urban environments poses a challenge. Appli...
The localization of autonomous ground vehicles in dense urban environments poses a challenge. Appli...