An algorithm for feature point tracking is proposed. The Interacting Multiple Model (IMM) filter is used to estimate the state of a feature point. The problem of data association, i.e. establishing which feature point to use in the state estimator, is solved by an assignment algorithm. A track management method is also developed. In particular a track continuation method is presented. The evaluation of the tracking system on real sequences shows that the IMM filter combined with the assignment algorithm outperforms the Kalman filter, used with the Nearest Neighbor (NN) filter, in terms of data association performance and robustness to sudden feature point maneuvers
Frequent occlusion of tracking targets leads to poor performance of tracking algorithms. A common pr...
Multiple point target tracking in the presence of dense clutter requires tracking maneuvering and no...
Accurate and robust tracking of humans is of growing interest in the image processing and computer v...
An algorithm for feature point tracking is proposed. The Interacting Multiple Model (IMM) filter is ...
A new algorithm is presented for feature point based motion tracking in long image sequences. Dynami...
AbstractÐThis paper studies the motion correspondence problem for which a diversity of qualitative a...
When tracking closely maneuvering targets, the critical role is played by both the chosen method of ...
The original target tracking algorithm based on a single model has long been unable to meet the comp...
This research is concerned with adaptive, probabilistic single target tracking algorithms. Though vi...
This paper presents a particle filtering algorithm for multiple object tracking. The proposed partic...
A novel visual object tracking scheme is proposed by using joint point feature correspondences and...
Copyright © 2005 Pattern Recognition Society Published by Elsevier B.V.This paper presents an object...
An efficient algorithm of the edge detection according to integrating the edge gradient with the ave...
Abstract- Two of the most important solutions in position an association algorithm is needed in orde...
The objective of visual object tracking is to find the location, orientation and scale (size) of an ...
Frequent occlusion of tracking targets leads to poor performance of tracking algorithms. A common pr...
Multiple point target tracking in the presence of dense clutter requires tracking maneuvering and no...
Accurate and robust tracking of humans is of growing interest in the image processing and computer v...
An algorithm for feature point tracking is proposed. The Interacting Multiple Model (IMM) filter is ...
A new algorithm is presented for feature point based motion tracking in long image sequences. Dynami...
AbstractÐThis paper studies the motion correspondence problem for which a diversity of qualitative a...
When tracking closely maneuvering targets, the critical role is played by both the chosen method of ...
The original target tracking algorithm based on a single model has long been unable to meet the comp...
This research is concerned with adaptive, probabilistic single target tracking algorithms. Though vi...
This paper presents a particle filtering algorithm for multiple object tracking. The proposed partic...
A novel visual object tracking scheme is proposed by using joint point feature correspondences and...
Copyright © 2005 Pattern Recognition Society Published by Elsevier B.V.This paper presents an object...
An efficient algorithm of the edge detection according to integrating the edge gradient with the ave...
Abstract- Two of the most important solutions in position an association algorithm is needed in orde...
The objective of visual object tracking is to find the location, orientation and scale (size) of an ...
Frequent occlusion of tracking targets leads to poor performance of tracking algorithms. A common pr...
Multiple point target tracking in the presence of dense clutter requires tracking maneuvering and no...
Accurate and robust tracking of humans is of growing interest in the image processing and computer v...