In this paper we introduce a novel surveillance system, which uses 3D information extracted from multiple cameras to detect, track and re-identify people. The detection method is based on a 3D Marked Point Process model using two pixel-level features extracted from multi-plane projections of binary foreground masks, and uses a stochastic optimization framework to estimate the position and the height of each person. We apply a rule based Kalman-filter tracking on the detection results to find the object-to-object correspondence between consecutive time steps. Finally, a 3D body model based long-term tracking module connects broken tracks and is also used to re-identify peopl
This article presents a new approach to the problem of simultaneous tracking of several people in lo...
This paper presents two approaches to the problem of simultaneous tracking of several people in low ...
This paper presents two approaches to the problem of simultaneous tracking of several people in low ...
In this paper we introduce a novel surveillance system, which uses 3D information extracted from mul...
In this paper we introduce a novel surveillance system, which uses 3D information extracted from mul...
In this paper we introduce a probabilistic approach on multiple person localization using multiple c...
One of the most interesting areas of research in computer vision is segmentation and tracking of peo...
Abstract. We propose a new simplified 3D body model (called Sarc3D) for surveillance application, th...
Wide area video surveillance always requires to extract and integrate information coming from differ...
Wide area video surveillance always requires to extract and integrate information coming from differ...
This paper presents a robust multi-view method for tracking people in 3D scene. Our method distingui...
In this work we present and evaluate a novel 3D approach to track single people in surveillance scen...
We propose a new simplified 3D body model (called Sarc3D) for surveillance application, that can be ...
We propose a new simplified 3D body model (called Sarc3D) for surveillance application, that can be ...
The current paper presents a low-complexity approach to the problem of simultaneous tracking of seve...
This article presents a new approach to the problem of simultaneous tracking of several people in lo...
This paper presents two approaches to the problem of simultaneous tracking of several people in low ...
This paper presents two approaches to the problem of simultaneous tracking of several people in low ...
In this paper we introduce a novel surveillance system, which uses 3D information extracted from mul...
In this paper we introduce a novel surveillance system, which uses 3D information extracted from mul...
In this paper we introduce a probabilistic approach on multiple person localization using multiple c...
One of the most interesting areas of research in computer vision is segmentation and tracking of peo...
Abstract. We propose a new simplified 3D body model (called Sarc3D) for surveillance application, th...
Wide area video surveillance always requires to extract and integrate information coming from differ...
Wide area video surveillance always requires to extract and integrate information coming from differ...
This paper presents a robust multi-view method for tracking people in 3D scene. Our method distingui...
In this work we present and evaluate a novel 3D approach to track single people in surveillance scen...
We propose a new simplified 3D body model (called Sarc3D) for surveillance application, that can be ...
We propose a new simplified 3D body model (called Sarc3D) for surveillance application, that can be ...
The current paper presents a low-complexity approach to the problem of simultaneous tracking of seve...
This article presents a new approach to the problem of simultaneous tracking of several people in lo...
This paper presents two approaches to the problem of simultaneous tracking of several people in low ...
This paper presents two approaches to the problem of simultaneous tracking of several people in low ...