The Structural SIMilarity Measure (SSIM) combined with the sequential Monte Carlo approach has been shown [1] to achieve more reliable video object tracking performance, compared with similar methods based on colour and edge histograms and Bhattacharyya distance. However, the combined use of the structural similarity and a particle filter results in increased computational complexity of the algorithm. In this paper, a novel fast approach for video tracking based on the structural similarity measure is presented. The tracking algorithm proposed determines the state of the target (location, size) based on the gradient ascent procedure applied to the structural similarity surface of the video frame, thus avoiding computationally expensive samp...
This paper presents new methods for efficient object tracking in video sequences using multiple feat...
Video cameras are among the most commonly used devices throughout the world which results in imaging...
Visual object tracking has been identified as a promising technique for many computer vision applica...
This paper addresses the problem of object tracking in video sequences. The use of a structural simi...
This book chapter presents recently developed approaches for object tracking in video combining the ...
This paper addresses the problem of object tracking in video sequences for surveillance applications...
AbstractTracking methods based on the particle filter uses frequently the appearance information of ...
AbstractThe most recent approach for measuring the image quality is the structural similarity index ...
AbstractTracking methods based on the particle filter uses frequently the appearance information of ...
Object tracking in video sequences is challenging under uncontrolled conditions. Tracking algorithms...
Usually, the video based object tracking deal with non-stationary image stream that changes over tim...
The choice of particle filter dissimilarity distance measures and likelihood functions is considered...
Motion detection and tracking algorithms are basic fundamental and critical tasks in many computer v...
Video tracking is one of the most active research topics recently. Tracking of objects and humans ha...
This paper addresses the issue of tracking a single visual object through crowded scenarios, where a...
This paper presents new methods for efficient object tracking in video sequences using multiple feat...
Video cameras are among the most commonly used devices throughout the world which results in imaging...
Visual object tracking has been identified as a promising technique for many computer vision applica...
This paper addresses the problem of object tracking in video sequences. The use of a structural simi...
This book chapter presents recently developed approaches for object tracking in video combining the ...
This paper addresses the problem of object tracking in video sequences for surveillance applications...
AbstractTracking methods based on the particle filter uses frequently the appearance information of ...
AbstractThe most recent approach for measuring the image quality is the structural similarity index ...
AbstractTracking methods based on the particle filter uses frequently the appearance information of ...
Object tracking in video sequences is challenging under uncontrolled conditions. Tracking algorithms...
Usually, the video based object tracking deal with non-stationary image stream that changes over tim...
The choice of particle filter dissimilarity distance measures and likelihood functions is considered...
Motion detection and tracking algorithms are basic fundamental and critical tasks in many computer v...
Video tracking is one of the most active research topics recently. Tracking of objects and humans ha...
This paper addresses the issue of tracking a single visual object through crowded scenarios, where a...
This paper presents new methods for efficient object tracking in video sequences using multiple feat...
Video cameras are among the most commonly used devices throughout the world which results in imaging...
Visual object tracking has been identified as a promising technique for many computer vision applica...