The problem of understanding road scenes has been on the fore-front in the computer vision community for the last couple of years. This enables autonomous systems to navigate and understand the surroundings in which it operates. It involves reconstructing the scene and estimating the objects present in it, such as ‘vehicles’, ‘road’, ‘pavements’ and ‘buildings’. This thesis focusses on these aspects and proposes solutions to address them. First, we propose a solution to generate a dense semantic map from multiple street-level images. This map can be imagined as the bird’s eye view of the region with associated semantic labels for ten’s of kilometres of street level data. We generate the overhead semantic view from street level images. This ...
Riemenschneider H., Bodis-Szomor A., Weissenberg J., Van Gool L., ''Learning where to classify in mu...
This thesis contributes to the emerging field of 3D scene understanding. That is, given a 3D scene r...
The advance of scene understanding methods based on machine learning relies on the availability of l...
Semantic scene understanding plays a prominent role in the environment perception of autonomous vehi...
Fast 3D reconstruction with semantic information in road scenes is of great requirements for autonom...
This paper is concerned with the problem of how to better exploit 3D geometric information for dense...
In this paper we propose a method to generate a large scale and accurate dense 3D semantic map of st...
Autonomous vehicles require an accurate understanding of the scene for safe operation in real-world ...
International audienceThis paper addresses the challenging problem of scene classification in street...
Semantic understanding of urban street scenes through visual perception has been widely studied due ...
Computer vision plays a central role in autonomous vehicle technology, because cameras are comparabl...
This work is supported by EPSRC research grants, HMGCC, TUBITAK researcher exchange grant, the IST P...
Over the past few years, progress towards the ambitious goal of widespread fully-autonomous vehicles...
In this thesis we leverage domain knowledge, specifically of road scenes, to provide a self-supervis...
Understanding the complex urban infrastructure withcentimeter-level accuracy is essential for many a...
Riemenschneider H., Bodis-Szomor A., Weissenberg J., Van Gool L., ''Learning where to classify in mu...
This thesis contributes to the emerging field of 3D scene understanding. That is, given a 3D scene r...
The advance of scene understanding methods based on machine learning relies on the availability of l...
Semantic scene understanding plays a prominent role in the environment perception of autonomous vehi...
Fast 3D reconstruction with semantic information in road scenes is of great requirements for autonom...
This paper is concerned with the problem of how to better exploit 3D geometric information for dense...
In this paper we propose a method to generate a large scale and accurate dense 3D semantic map of st...
Autonomous vehicles require an accurate understanding of the scene for safe operation in real-world ...
International audienceThis paper addresses the challenging problem of scene classification in street...
Semantic understanding of urban street scenes through visual perception has been widely studied due ...
Computer vision plays a central role in autonomous vehicle technology, because cameras are comparabl...
This work is supported by EPSRC research grants, HMGCC, TUBITAK researcher exchange grant, the IST P...
Over the past few years, progress towards the ambitious goal of widespread fully-autonomous vehicles...
In this thesis we leverage domain knowledge, specifically of road scenes, to provide a self-supervis...
Understanding the complex urban infrastructure withcentimeter-level accuracy is essential for many a...
Riemenschneider H., Bodis-Szomor A., Weissenberg J., Van Gool L., ''Learning where to classify in mu...
This thesis contributes to the emerging field of 3D scene understanding. That is, given a 3D scene r...
The advance of scene understanding methods based on machine learning relies on the availability of l...