Video surveillance systems are of a great value for public safety. As one of the most import surveillance applications, person re-identification is defined as the problem of identifying people across images that have been captured by different surveillance cameras without overlapping fields of view. With the increasing need for automated video analysis, this task is increasingly receiving attention. However, this problem is challenging due to the large variations of lighting, pose, viewpoint and background. To tackle these different difficulties, in this thesis, we propose several deep learning based approaches to obtain a better person re-identification performance in different ways. In the first proposed approach, we use pedestrian attrib...
This thesis targets the appearance-based re-identification of humans in images and videos. Human re-...
Video surveillance system is one of the most essential topics in the computer vision field. As the r...
In this paper, we propose a joint dataset for person re-identification task that includes the existi...
Video surveillance systems are of a great value for public safety. As one of the most import surveil...
La vidéosurveillance est d’une grande valeur pour la sécurité publique. En tant que l’un des plus im...
Person re-identification is an important computer vision task. It can be used in the real-world appl...
International audienceIn video surveillance, pedestrian attributes are defined as semantic descripto...
International audienceIn this paper, we propose a pedestrian attribute recognition approach and a CN...
In this dissertation I address the problem of person re-identification for wide-area surveillance app...
One of the common task in any video surveillance system is re-identifications of humans, which aims ...
This thesis addresses the problem of Human Re-Identification, the task of associating pedestrians o...
This thesis focuses on the problem of hu man re-identification through a network of cameras with non...
International audienceIn video surveillance, pedestrian attributes such as gender, clothing or hair ...
This thesis focuses on the problem of hu man re-identification through a network of cameras with non...
The paper analyses the problem of person re-identification accuracy in distributed video surveillanc...
This thesis targets the appearance-based re-identification of humans in images and videos. Human re-...
Video surveillance system is one of the most essential topics in the computer vision field. As the r...
In this paper, we propose a joint dataset for person re-identification task that includes the existi...
Video surveillance systems are of a great value for public safety. As one of the most import surveil...
La vidéosurveillance est d’une grande valeur pour la sécurité publique. En tant que l’un des plus im...
Person re-identification is an important computer vision task. It can be used in the real-world appl...
International audienceIn video surveillance, pedestrian attributes are defined as semantic descripto...
International audienceIn this paper, we propose a pedestrian attribute recognition approach and a CN...
In this dissertation I address the problem of person re-identification for wide-area surveillance app...
One of the common task in any video surveillance system is re-identifications of humans, which aims ...
This thesis addresses the problem of Human Re-Identification, the task of associating pedestrians o...
This thesis focuses on the problem of hu man re-identification through a network of cameras with non...
International audienceIn video surveillance, pedestrian attributes such as gender, clothing or hair ...
This thesis focuses on the problem of hu man re-identification through a network of cameras with non...
The paper analyses the problem of person re-identification accuracy in distributed video surveillanc...
This thesis targets the appearance-based re-identification of humans in images and videos. Human re-...
Video surveillance system is one of the most essential topics in the computer vision field. As the r...
In this paper, we propose a joint dataset for person re-identification task that includes the existi...