In this paper, a robust visual tracking method is proposed to track an object in dynamic conditions that include motion blur, illumination changes, pose variations, and occlusions. To cope with these challenges, multiple trackers with different feature descriptors are utilized, and each of which shows different level of robustness to certain changes in an object's appearance. To fuse these independent trackers, we propose two configurations, tracker selection and interaction. The tracker interaction is achieved based on a transition probability matrix (TPM) in a probabilistic manner. The tracker selection extracts one tracking result from among multiple tracker outputs by choosing the tracker that has the highest tracker probability. A...
This paper addresses online learning of reference object distribution in the context of two hybrid t...
Object tracking is a vital topic in computer vision. Although tracking algorithms have gained great ...
Proposed is a novel method that can adaptively extract discriminative features and learn the target ...
Visual object tracking is an important research area within computer vision. Object tracking has ap...
The original publication can be found at www.springerlink.comRobust tracking of objects in video is ...
Long-term persistent tracking in ever-changing environments is a challenging task, which often requi...
A novel visual object tracking scheme is proposed by using joint point feature correspondences and...
A novel visual object tracking scheme is proposed by using joint point feature correspondences and...
xviii, 149 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P COMP 2013 ZhangKVisual tracki...
We propose a novel method for tracking objects in a video scene that undergo dras-tic changes in the...
Proposed is a novel method that can adaptively extract discriminative features and learn the target ...
We propose a novel method for tracking objects in a video scene that undergo dras-tic changes in the...
We propose a framework for learning robust, adaptive, appearance models to be used for motion-based ...
Robust object tracking is a challenging task in comput-er vision. To better solve the partial occlus...
Robust object tracking is a challenging task in comput-er vision. To better solve the partial occlus...
This paper addresses online learning of reference object distribution in the context of two hybrid t...
Object tracking is a vital topic in computer vision. Although tracking algorithms have gained great ...
Proposed is a novel method that can adaptively extract discriminative features and learn the target ...
Visual object tracking is an important research area within computer vision. Object tracking has ap...
The original publication can be found at www.springerlink.comRobust tracking of objects in video is ...
Long-term persistent tracking in ever-changing environments is a challenging task, which often requi...
A novel visual object tracking scheme is proposed by using joint point feature correspondences and...
A novel visual object tracking scheme is proposed by using joint point feature correspondences and...
xviii, 149 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P COMP 2013 ZhangKVisual tracki...
We propose a novel method for tracking objects in a video scene that undergo dras-tic changes in the...
Proposed is a novel method that can adaptively extract discriminative features and learn the target ...
We propose a novel method for tracking objects in a video scene that undergo dras-tic changes in the...
We propose a framework for learning robust, adaptive, appearance models to be used for motion-based ...
Robust object tracking is a challenging task in comput-er vision. To better solve the partial occlus...
Robust object tracking is a challenging task in comput-er vision. To better solve the partial occlus...
This paper addresses online learning of reference object distribution in the context of two hybrid t...
Object tracking is a vital topic in computer vision. Although tracking algorithms have gained great ...
Proposed is a novel method that can adaptively extract discriminative features and learn the target ...