Abrupt motion is a significant challenge that commonly causes traditional tracking methods to fail. This paper presents an improved visual saliency model and integrates it to a particle filter tracker to solve this problem. Once the target is lost, our algorithm recovers tracking by detecting the target region from salient regions, which are obtained in the saliency map of current frame. In addition, to strengthen the saliency of target region, the target model is used as a prior knowledge to calculate a weight set which is utilized to construct our improved saliency map adaptively. Furthermore, we adopt the covariance descriptor as the appearance model to describe the object more accurately. Compared with several other tracking algorithms,...
In this paper, we propose an efficient and accurate visual tracker equipped with a new particle filt...
Biologically plausible algorithms for motion saliency and visual tracking are proposed. First a spat...
In visual adaptive tracking, the tracker adapts to the target, background, and conditions of the ima...
The algorithm proposed in this paper is designed to solve two challenging issues in visual tracking:...
International audienceThis paper presents a robust tracking method based on the integration of visua...
Visual tracking is a critical task in many computer vision applications such as surveillance, vehicl...
Particle filtering (PF) based object tracking algorithms have drawn great attention from lots of sch...
Abstract This paper presents a novel particle filter called Motion-Adaptive Particle Filter (MAPF) t...
Particle filtering is now established as one of the most popular method for visual tracking. Within ...
This paper presents a tracking algorithm based on a sequential importance sampling (SIS) particle fi...
Although particle filters improve the performance of convolutional-correlation trackers, especially ...
Abstract—If there is an occlusion, the target state model would not match motion model anymore and m...
In this work, a new variant of particle filter has been proposed. In visual object tracking, particl...
Visual tracking of humans or objects in motion is a challenging problem when observed data undergo a...
In this paper, we propose an efficient and accurate visual tracker equipped with a new particle filt...
In this paper, we propose an efficient and accurate visual tracker equipped with a new particle filt...
Biologically plausible algorithms for motion saliency and visual tracking are proposed. First a spat...
In visual adaptive tracking, the tracker adapts to the target, background, and conditions of the ima...
The algorithm proposed in this paper is designed to solve two challenging issues in visual tracking:...
International audienceThis paper presents a robust tracking method based on the integration of visua...
Visual tracking is a critical task in many computer vision applications such as surveillance, vehicl...
Particle filtering (PF) based object tracking algorithms have drawn great attention from lots of sch...
Abstract This paper presents a novel particle filter called Motion-Adaptive Particle Filter (MAPF) t...
Particle filtering is now established as one of the most popular method for visual tracking. Within ...
This paper presents a tracking algorithm based on a sequential importance sampling (SIS) particle fi...
Although particle filters improve the performance of convolutional-correlation trackers, especially ...
Abstract—If there is an occlusion, the target state model would not match motion model anymore and m...
In this work, a new variant of particle filter has been proposed. In visual object tracking, particl...
Visual tracking of humans or objects in motion is a challenging problem when observed data undergo a...
In this paper, we propose an efficient and accurate visual tracker equipped with a new particle filt...
In this paper, we propose an efficient and accurate visual tracker equipped with a new particle filt...
Biologically plausible algorithms for motion saliency and visual tracking are proposed. First a spat...
In visual adaptive tracking, the tracker adapts to the target, background, and conditions of the ima...