This paper proposes a new visual object tracking algorithm using a novel Bayesian Kalman filter (BKF) with simplified Gaussian mixture (BKF-SGM). The new BKF-SGM employs a GM representation of the state and noise densities and a novel direct density simplifying algorithm for avoiding the exponential complexity growth of conventional KFs using GM. Together with an improved mean shift (MS) algorithm, a new BKF-SGM with improved MS (BKF-SGM-IMS) algorithm with more robust tracking performance is also proposed. Experimental results show that our method can successfully handle complex scenarios with good performance and low arithmetic complexity. © IEEEpublished_or_final_versio
This paper describes contributions to two problems related to visual tracking: control model design ...
The extended Kalman filter (EKF) has been used as the standard technique for performing recursive no...
The object tracking is needed in many tasks such as video compression, surveillance, automated video...
VISUAL tracking is one of the rapidly developing fields of computer vision. In visual field, Object ...
Object detection and tracking are two fundamental tasks in multicamera surveillance. This paper prop...
A framework for real-time tracking of complex non-rigid objects is presented. The object shape is ap...
The classical mean shift algorithm for tracking in perfectly arranged conditions constitutes a good ...
Visual tracking represents the basic processing step for most video analytics applications where the...
Object tracking has been applied in many fields such as intelligent surveillance and computer vision...
In this thesis an enhanced Cam-shift Kalman object tracking algorithm for video surveillance and obj...
This thesis is concerned with the core computer vision challenge of obtaining efficient and robust v...
In this article a Bayesian filter approximation is proposed for simultaneous multiple target detecti...
Tracking objects of interest in video sequences, referred in computer vision literature as video tra...
The Kalman filter has been used successfully in different prediction applications or state determina...
Abstract. This paper proposes a general Kernel-Bayesian framework for object tracking. In this frame...
This paper describes contributions to two problems related to visual tracking: control model design ...
The extended Kalman filter (EKF) has been used as the standard technique for performing recursive no...
The object tracking is needed in many tasks such as video compression, surveillance, automated video...
VISUAL tracking is one of the rapidly developing fields of computer vision. In visual field, Object ...
Object detection and tracking are two fundamental tasks in multicamera surveillance. This paper prop...
A framework for real-time tracking of complex non-rigid objects is presented. The object shape is ap...
The classical mean shift algorithm for tracking in perfectly arranged conditions constitutes a good ...
Visual tracking represents the basic processing step for most video analytics applications where the...
Object tracking has been applied in many fields such as intelligent surveillance and computer vision...
In this thesis an enhanced Cam-shift Kalman object tracking algorithm for video surveillance and obj...
This thesis is concerned with the core computer vision challenge of obtaining efficient and robust v...
In this article a Bayesian filter approximation is proposed for simultaneous multiple target detecti...
Tracking objects of interest in video sequences, referred in computer vision literature as video tra...
The Kalman filter has been used successfully in different prediction applications or state determina...
Abstract. This paper proposes a general Kernel-Bayesian framework for object tracking. In this frame...
This paper describes contributions to two problems related to visual tracking: control model design ...
The extended Kalman filter (EKF) has been used as the standard technique for performing recursive no...
The object tracking is needed in many tasks such as video compression, surveillance, automated video...