Title
Optical flow-based real-time object tracking using non-prior training active feature model
Abstract
This paper presents a feature-based object tracking algorithm using optical flow under the non-prior training (NPT) active feature model (AFM) framework. The proposed tracking procedure can be divided into three steps: (i) localization of an object-of-interest, (ii) prediction and correction of the object's position by utilizing spatio-temporal information, and (iii) restoration of occlusion using NPT-AFM. The proposed algorithm can track both rigid and deformable objects, and is robust against the object's sudden motion because both a feature point and the corresponding motion direction are tracked at the same time. Tracking performance is not degraded even with complicated background because feature points inside an object are completely separated from background. Finally, the AFM enables stable tracking of occluded objects with maximum 60% occlusion. NPT-AFM, which is one of the major contributions of this paper, removes the off-line, preprocessing step for generating a priori training set. The training set used for model fitting can be updated at each frame to make more robust object's features under occluded situation. The proposed AFM can track deformable, partially occluded objects by using the greatly reduced number of feature points rather than taking entire shapes in the existing shape-based methods. The on-line updating of the training set and reducing the number of feature points can realize a real-time, robust tracking system. Experiments have been performed using several in-house video clips of a static camera including objects such as a robot moving on a floor and people walking both indoor and outdoor. In order to show the performance of the proposed tracking algorithm, some experiments have been performed under noisy and low-contrast environment. For more objective comparison, PETS 2001 and PETS 2002 datasets were also used.
Year
DOI
Venue
2005
10.1016/j.rti.2005.03.006
Real-Time Imaging
Keywords
Field
DocType
stable tracking,training set,non-prior training,feature point,feature-based object tracking algorithm,robust tracking system,occluded object,proposed tracking procedure,optical flow-based real-time object,proposed tracking algorithm,deformable object,active feature model,optical flow,tracking system,object tracking,real time
Computer vision,Object detection,Computer science,Segmentation,A priori and a posteriori,Tracking system,Feature extraction,Video tracking,Feature model,Artificial intelligence,Optical flow
Journal
Volume
Issue
ISSN
11
3
Real-Time Imaging
Citations 
PageRank 
References 
20
1.25
12
Authors
7
Name
Order
Citations
PageRank
Jeongho Shin112417.26
Sangjin Kim2525.17
Sang-Kyu Kang314212.20
Seong-Won Lee411216.01
Joonki Paik561171.87
Besma Abidi615411.48
Mongi A. Abidi71372104.38