This paper addresses issues in object tracking with occlusion scenarios, where multiple uncalibrated cameras with overlapping fields of view are exploited. We propose a novel method where tracking is first done independently in each individual view and then tracking results are mapped from different views to improve the tracking jointly. The proposed tracker uses the assumptions that objects are visible in at least one view and move uprightly on a common planar ground that may induce a homography relation between views. A method for online learning of object appearances on Riemannian manifolds is also introduced. The main novelties of the paper include: (a) define a similarity measure, based on geodesics between a candidate object and a set...
In this paper we deal with the problem of matching moving objects between multiple views using geome...
Multiple sensor measurement has gained in popularity for computer vision tasks such as visual object...
This paper proposes a new Bayesian framework-based online learning method on a Riemannian manifold f...
This paper addresses problem of object tracking in occlusion scenarios, where multiple uncalibrated ...
Visual object tracking from single cameras is often employedas the basic block in a multi-camera tra...
This paper addresses issues of online learning and occlusion handling in video object tracking. Alth...
This paper proposes a novel Bayesian online learning and tracking scheme for video objects on Grassm...
This paper describes a novel domain-shift tracking scheme that includes Bayesian formulation on the ...
This paper describes a novel Grassmann manifoldobject tracking scheme that includes the modules ofma...
We propose a novel visual tracking scheme that exploits boththe geometrical structure of Grassmann m...
This paper proposes a novel online domain-shift appearance learning and object tracking scheme on a ...
This paper addresses issues in video object tracking. We propose a novel method where tracking is re...
Multi-camera tracking systems often must maintain consistent identity labels of the targets across v...
This paper addresses the problem of object tracking from visual and infrared videos captured either ...
Robust multi-object tracking-by-detection requires the correct assignment of noisy detection results...
In this paper we deal with the problem of matching moving objects between multiple views using geome...
Multiple sensor measurement has gained in popularity for computer vision tasks such as visual object...
This paper proposes a new Bayesian framework-based online learning method on a Riemannian manifold f...
This paper addresses problem of object tracking in occlusion scenarios, where multiple uncalibrated ...
Visual object tracking from single cameras is often employedas the basic block in a multi-camera tra...
This paper addresses issues of online learning and occlusion handling in video object tracking. Alth...
This paper proposes a novel Bayesian online learning and tracking scheme for video objects on Grassm...
This paper describes a novel domain-shift tracking scheme that includes Bayesian formulation on the ...
This paper describes a novel Grassmann manifoldobject tracking scheme that includes the modules ofma...
We propose a novel visual tracking scheme that exploits boththe geometrical structure of Grassmann m...
This paper proposes a novel online domain-shift appearance learning and object tracking scheme on a ...
This paper addresses issues in video object tracking. We propose a novel method where tracking is re...
Multi-camera tracking systems often must maintain consistent identity labels of the targets across v...
This paper addresses the problem of object tracking from visual and infrared videos captured either ...
Robust multi-object tracking-by-detection requires the correct assignment of noisy detection results...
In this paper we deal with the problem of matching moving objects between multiple views using geome...
Multiple sensor measurement has gained in popularity for computer vision tasks such as visual object...
This paper proposes a new Bayesian framework-based online learning method on a Riemannian manifold f...