Computer vision algorithms have played a pivotal role in commercial video surveillance systems for a number of years. However, a common weakness among these systems is their inability to handle crowded scenes. In this thesis, we have developed algorithms that overcome some of the challenges encountered in videos of crowded environments such as sporting events, religious festivals, parades, concerts, train stations, airports, and malls. We adopt a top-down approach by first performing a global-level analysis that locates dynamically distinct crowd regions within the video. This knowledge is then employed in the detection of abnormal behaviors and tracking of individual targets within crowds. In addition, the thesis explores the utility of co...
The steady worldwide population growth with continuing urbanization renders the formation of crowd ...
Visual analysis of dense crowds is particularly challenging due to large number of individuals, occl...
International audienceThe ability of efficient computer vision tools (detec- tion of pedestrians, tr...
Computer vision algorithms have played a pivotal role in commercial video surveillance systems for a...
In this dissertation, we address the problem of discovery and representation of group activity of hu...
Crowd behavior analysis is an interdisciplinary topic. Understanding the col-lective crowd behaviors...
Video Surveillance and Monitoring is very active area of research in Computer Vision. However, most ...
International audienceIn this chapter we first review the recent studies that have begun to address ...
With security and surveillance gaining paramount importance in recent years, it has become important...
The increasing number of cameras and a handful of human operators to monitor the video inputs from h...
There is an increasing interest in crowd scene analysis in video surveillance due to the ubiquitousl...
This paper presents a target tracking framework for un-structured crowded scenes. Unstructured crowd...
This paper presents a target tracking framework for unstructured crowded scenes. Unstructured crowde...
University of Technology Sydney. Faculty of Engineering and Information Technology.As the population...
In this paper we introduce a novel method to detect and localize abnormal behaviors in crowd videos ...
The steady worldwide population growth with continuing urbanization renders the formation of crowd ...
Visual analysis of dense crowds is particularly challenging due to large number of individuals, occl...
International audienceThe ability of efficient computer vision tools (detec- tion of pedestrians, tr...
Computer vision algorithms have played a pivotal role in commercial video surveillance systems for a...
In this dissertation, we address the problem of discovery and representation of group activity of hu...
Crowd behavior analysis is an interdisciplinary topic. Understanding the col-lective crowd behaviors...
Video Surveillance and Monitoring is very active area of research in Computer Vision. However, most ...
International audienceIn this chapter we first review the recent studies that have begun to address ...
With security and surveillance gaining paramount importance in recent years, it has become important...
The increasing number of cameras and a handful of human operators to monitor the video inputs from h...
There is an increasing interest in crowd scene analysis in video surveillance due to the ubiquitousl...
This paper presents a target tracking framework for un-structured crowded scenes. Unstructured crowd...
This paper presents a target tracking framework for unstructured crowded scenes. Unstructured crowde...
University of Technology Sydney. Faculty of Engineering and Information Technology.As the population...
In this paper we introduce a novel method to detect and localize abnormal behaviors in crowd videos ...
The steady worldwide population growth with continuing urbanization renders the formation of crowd ...
Visual analysis of dense crowds is particularly challenging due to large number of individuals, occl...
International audienceThe ability of efficient computer vision tools (detec- tion of pedestrians, tr...