DoctorNowadays, a tremendous number of videos are captured, consequently, requirement on automatic video analysis increases. Video analysis refers to computer vision techniques which detect and recognize interesting activities or objects from videos. In this thesis, we focus on three challenging problems of video analysis: 1) co-activity detection, 2) salient object detection and 3) visual object tracking and segmentation. Co-activity detection is the task extracting one or more streaks of frames containing a common activity from each video out of multiple ones without separate training procedure. Salient object detection refers to the task of identifying regions which stand out from their neighborhood and draw attention of human visual sys...
The world that we live in is a complex network of agents and their interactions which are termed as ...
The concept of interrogating similarities within a data set has a long history in fields ranging fro...
International audienceThis paper shows a concrete example of the use of graph mining for tracking ob...
We propose a simple but effective unsupervised learning algorithm to detect a common activity (co-ac...
One of the main goals of computer vision is video understanding, where objects in the video are dete...
In this fast paced digital age, a vast amount of videos are produced every day, such as movies, TV p...
Graduation date: 2011Access restricted to the OSU Community at author's request from May 12, 2011 - ...
The study of psychology and cognitive science has shown that the human perception is selective. When...
International audienceIn this paper we propose a method for automatic detection of salient objects i...
Recently many graph-based salient region/object detection methods have been developed. They are rath...
Activity analysis is a field of computer vision which has shown great progress in the past decade. S...
We propose an algorithm for detecting and categorizing (un)usual human activity in a video which mig...
Figure 1: In videos, each frame strongly correlates with its neighbors. Our approach exploits this f...
Automatically recognizing activities in video is a classic problem in vision and helps to understand...
In this thesis we present a system for detection of events in video. First a multiview approach to a...
The world that we live in is a complex network of agents and their interactions which are termed as ...
The concept of interrogating similarities within a data set has a long history in fields ranging fro...
International audienceThis paper shows a concrete example of the use of graph mining for tracking ob...
We propose a simple but effective unsupervised learning algorithm to detect a common activity (co-ac...
One of the main goals of computer vision is video understanding, where objects in the video are dete...
In this fast paced digital age, a vast amount of videos are produced every day, such as movies, TV p...
Graduation date: 2011Access restricted to the OSU Community at author's request from May 12, 2011 - ...
The study of psychology and cognitive science has shown that the human perception is selective. When...
International audienceIn this paper we propose a method for automatic detection of salient objects i...
Recently many graph-based salient region/object detection methods have been developed. They are rath...
Activity analysis is a field of computer vision which has shown great progress in the past decade. S...
We propose an algorithm for detecting and categorizing (un)usual human activity in a video which mig...
Figure 1: In videos, each frame strongly correlates with its neighbors. Our approach exploits this f...
Automatically recognizing activities in video is a classic problem in vision and helps to understand...
In this thesis we present a system for detection of events in video. First a multiview approach to a...
The world that we live in is a complex network of agents and their interactions which are termed as ...
The concept of interrogating similarities within a data set has a long history in fields ranging fro...
International audienceThis paper shows a concrete example of the use of graph mining for tracking ob...