In this work, we address the detection of vehicles in a video stream obtained from a moving airborne platform. We propose a Bayesian framework for estimating dense optical flow over time that explicitly estimates a persistent model of background appearance. The approach assumes that the scene can be described by background and occlusion layers, estimated within an expectation-maximization framework. The mathematical formulation of the paper is an extension of the work in (H. Yalcin et al., 2005) where motion and appearance models for foreground and background layers are estimated simultaneously in a Bayesian framework
We consider a visual scene analysis scenario where objects (e.g. people, cars) pass through the view...
This paper is focused on addressing the challenges involved in building a single adaptive model of m...
We address the detection and tracking of moving objects in a video stream obtained from a moving air...
In this work, we address the detection of vehicles in a video stream obtained from a moving airborne...
With the wide development of UAV (Unmanned Aerial Vehicle) technology, moving target detection for a...
In this work, we present an automatic vehicle detection system for airborne videos using combined fe...
We consider detection of moving ground vehicles in airborne sequences recorded by a thermal sensor w...
We propose a novel background subtraction algorithm for the videos captured by a moving camera. In o...
Abstract—In this work, we present an automatic vehicle detection system for airborne videos using co...
Visual surveillance from low-altitude airborne platforms plays a key role in urban traffic surveilla...
Background extraction from video sequences is a useful and important technique in video surveillance...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
Foreground-Background Segregation has been intensively researched in the last decades as it is an im...
Airborne vehicle detection and tracking systems equipped on unmanned aerial vehicles (UAVs) are rece...
The algorithm presented in this paper aims to segment the foreground objects in video (e.g., people)...
We consider a visual scene analysis scenario where objects (e.g. people, cars) pass through the view...
This paper is focused on addressing the challenges involved in building a single adaptive model of m...
We address the detection and tracking of moving objects in a video stream obtained from a moving air...
In this work, we address the detection of vehicles in a video stream obtained from a moving airborne...
With the wide development of UAV (Unmanned Aerial Vehicle) technology, moving target detection for a...
In this work, we present an automatic vehicle detection system for airborne videos using combined fe...
We consider detection of moving ground vehicles in airborne sequences recorded by a thermal sensor w...
We propose a novel background subtraction algorithm for the videos captured by a moving camera. In o...
Abstract—In this work, we present an automatic vehicle detection system for airborne videos using co...
Visual surveillance from low-altitude airborne platforms plays a key role in urban traffic surveilla...
Background extraction from video sequences is a useful and important technique in video surveillance...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
Foreground-Background Segregation has been intensively researched in the last decades as it is an im...
Airborne vehicle detection and tracking systems equipped on unmanned aerial vehicles (UAVs) are rece...
The algorithm presented in this paper aims to segment the foreground objects in video (e.g., people)...
We consider a visual scene analysis scenario where objects (e.g. people, cars) pass through the view...
This paper is focused on addressing the challenges involved in building a single adaptive model of m...
We address the detection and tracking of moving objects in a video stream obtained from a moving air...