Camera motion detection is essential for automated video analysis. We propose a new probabilistic model for detecting zoom-in/zoom-out operations. The model uses EM to estimate the probability of a zoom versus a non-zoom operation from standard MPEG motion vectors. Traditional methods usually set an empirical threshold after deriving parameters proportional to zoom, pan, rotate and tilt. In contrast, our probabilistic model has a solid probabilistic foundation and a clear, simple probability threshold. Experiments show that this probabilistic model significantly out-performs a baseline parametric method for zoom detection in both precision and recall
Abstract Ever increasing the robust tracking of abrupt motion is a challenging task in computer visi...
We propose and evaluate a method to determine whether a given digital image is the result of a digit...
The exploitation of video data requires to extract information at a rather semantic level, and then,...
Camera motion detection is essential for automated video analysis. We propose a new probabilistic mo...
We present new probabilistic motion models of interest for the detection of meaningful dynamic conte...
We present new probabilistic motion models of interest for the detection of relevant dynamic content...
Conference of 9th International Conference on Computer Vision Theory and Applications, VISAPP 2014 ;...
The motion in video frames can be divided into global motion and local motion. Motion induced in the...
Abstract- In modern video coding standards, motion compensated prediction (MCP) plays a key role to ...
The work presented in this thesis is mainly based on the discriminative method. Zooming is one of th...
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
The use of a single camera with a zoom lens for tracking involves a continuous arbitration of accura...
In this paper, we propose a new algorithm for fast estimation of camera motion directly in MPEG comp...
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
Motion segmentation is the task of assigning a binary label to every pixel in an image sequence spec...
Abstract Ever increasing the robust tracking of abrupt motion is a challenging task in computer visi...
We propose and evaluate a method to determine whether a given digital image is the result of a digit...
The exploitation of video data requires to extract information at a rather semantic level, and then,...
Camera motion detection is essential for automated video analysis. We propose a new probabilistic mo...
We present new probabilistic motion models of interest for the detection of meaningful dynamic conte...
We present new probabilistic motion models of interest for the detection of relevant dynamic content...
Conference of 9th International Conference on Computer Vision Theory and Applications, VISAPP 2014 ;...
The motion in video frames can be divided into global motion and local motion. Motion induced in the...
Abstract- In modern video coding standards, motion compensated prediction (MCP) plays a key role to ...
The work presented in this thesis is mainly based on the discriminative method. Zooming is one of th...
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
The use of a single camera with a zoom lens for tracking involves a continuous arbitration of accura...
In this paper, we propose a new algorithm for fast estimation of camera motion directly in MPEG comp...
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
Motion segmentation is the task of assigning a binary label to every pixel in an image sequence spec...
Abstract Ever increasing the robust tracking of abrupt motion is a challenging task in computer visi...
We propose and evaluate a method to determine whether a given digital image is the result of a digit...
The exploitation of video data requires to extract information at a rather semantic level, and then,...