In this paper, we briefly summarize our video surveillance research framework. We then survey current research on human activity recognition, and present our current work on real-time multi-person tracking. By applying adaptive background subtraction, foreground regions are first identified and segmented. A clustering algorithm is then used to group the foreground pixels in an unsupervised manner to estimate the image location of individual persons. A Kalman filter is used to keep track of each person and a unique label is assigned to each tracked individual. Based on this approach, people can enter and leave the scene at random. Abnormity, such as silhouette merging, is handled gracefully and individual persons can be tracked correctly aft...
A computer vision system for tracking multiple people in relatively unconstrained environments is de...
This paper presents a fast people tracking technique comprising a simple background subtraction and ...
In this paper we present a multi-people-tracking algorithm which is able to detect and track hu-mans...
Due to an increasing demand on video surveillance systems methods for real time tracking of multiple...
The problem of detecting and tracking people in images and video has been the subject of a great dea...
There is growing interest in video-based solutions for people monitoring and counting in business an...
In this paper an improved real time algorithm for de-tecting pedestrians in surveillance video is pr...
One of the most interesting areas of research in computer vision is segmentation and tracking of peo...
This dissertation addresses the problem of human detection and tracking in surveillance videos. Even...
Unlike tracking rigid targets, the task of tracking multiple people is very challenging because the ...
Unlike tracking rigid targets, the task of tracking multiple people is very challenging because the ...
Tracking the object of interest within a camera's view is essential for crime prevention. This study...
The greatest challenge on monitoring characters from a monocular video scene is to track targets und...
This paper presents a solution to the problem of tracking people within crowded scenes. The aim is t...
It is very easy for humans to track a moving object or people in a video clip and to further analyze...
A computer vision system for tracking multiple people in relatively unconstrained environments is de...
This paper presents a fast people tracking technique comprising a simple background subtraction and ...
In this paper we present a multi-people-tracking algorithm which is able to detect and track hu-mans...
Due to an increasing demand on video surveillance systems methods for real time tracking of multiple...
The problem of detecting and tracking people in images and video has been the subject of a great dea...
There is growing interest in video-based solutions for people monitoring and counting in business an...
In this paper an improved real time algorithm for de-tecting pedestrians in surveillance video is pr...
One of the most interesting areas of research in computer vision is segmentation and tracking of peo...
This dissertation addresses the problem of human detection and tracking in surveillance videos. Even...
Unlike tracking rigid targets, the task of tracking multiple people is very challenging because the ...
Unlike tracking rigid targets, the task of tracking multiple people is very challenging because the ...
Tracking the object of interest within a camera's view is essential for crime prevention. This study...
The greatest challenge on monitoring characters from a monocular video scene is to track targets und...
This paper presents a solution to the problem of tracking people within crowded scenes. The aim is t...
It is very easy for humans to track a moving object or people in a video clip and to further analyze...
A computer vision system for tracking multiple people in relatively unconstrained environments is de...
This paper presents a fast people tracking technique comprising a simple background subtraction and ...
In this paper we present a multi-people-tracking algorithm which is able to detect and track hu-mans...