This paper presents an abandoned item and illegally parked vehicle detection method for single static camera video surveillance applications. By processing the input video at different frame rates, two backgrounds are constructed; one for short-term and another for long-term. Each of these backgrounds is defined as a mixture of Gaussian models, which are adapted using online Bayesian update. Two binary foreground maps are estimated by comparing the current frame with the backgrounds, and motion statics are aggregated in a likelihood image by applying a set of heuristics to the foreground maps. Likelihood image is then used to differentiate between the pixels that belong to moving objects, temporarily static regions and scene background. Dep...
Detection and segmentation of objects of interest in image sequences is the first major processing s...
Thesis (M.S.)--University of Kansas, Electrical Engineering & Computer Science, 2007.Automated surve...
This thesis presents a general, trainable system for object detection in static images and video seq...
This paper presents a novel approach to detect unattended and removed objects from a single fixed ca...
The automatic detection of objects that are abandoned or removed in a video scene is an interesting ...
Detecting static objects in scenes containing significant number of moving objects has several appl...
Abstract-This research work presents an efficient approach of detecting unattended or stolen objects...
Detection of moving objects remaining static is a fundamental step in many computer vision applicati...
The emergence of video surveillance is the most promising solution for people living independently i...
We present a novel framework for learning patterns of motion and sizes of objects in static camera s...
With video surveillance systems becoming more prominent, there have been numerous research studies c...
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
This thesis addresses the issues of applying advanced video analytics for surveillance applications....
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
This paper is focused on addressing the challenges involved in building a single adaptive model of m...
Detection and segmentation of objects of interest in image sequences is the first major processing s...
Thesis (M.S.)--University of Kansas, Electrical Engineering & Computer Science, 2007.Automated surve...
This thesis presents a general, trainable system for object detection in static images and video seq...
This paper presents a novel approach to detect unattended and removed objects from a single fixed ca...
The automatic detection of objects that are abandoned or removed in a video scene is an interesting ...
Detecting static objects in scenes containing significant number of moving objects has several appl...
Abstract-This research work presents an efficient approach of detecting unattended or stolen objects...
Detection of moving objects remaining static is a fundamental step in many computer vision applicati...
The emergence of video surveillance is the most promising solution for people living independently i...
We present a novel framework for learning patterns of motion and sizes of objects in static camera s...
With video surveillance systems becoming more prominent, there have been numerous research studies c...
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
This thesis addresses the issues of applying advanced video analytics for surveillance applications....
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
This paper is focused on addressing the challenges involved in building a single adaptive model of m...
Detection and segmentation of objects of interest in image sequences is the first major processing s...
Thesis (M.S.)--University of Kansas, Electrical Engineering & Computer Science, 2007.Automated surve...
This thesis presents a general, trainable system for object detection in static images and video seq...