Title
Learning local models for 2D human motion tracking
Abstract
We present a novel approach to tracking 2D human motion in uncalibrated monocular videos. Human motion usually exhibits time-varying patterns, and we propose to use locally learnt prior models to capture this characteristics. For each input image, our method automatically learns a local probability density model and a local dynamical model from a set of training examples that are close matches to the input. We evaluate the image likelihood by matching a deformable 2D human body model to the input images. The local models and the image likelihood are integrated to optimize the pose for the current input. Experiments on both synthetic and real videos demonstrate the effectiveness of our method.
Year
DOI
Venue
2009
10.1109/ICIP.2009.5413954
ICIP
Keywords
Field
DocType
image likelihood,local dynamical model,image matching,local learning,motion tracking,pose estimation,local probability density model,input image,learnt prior model,human body model,local model,uncalibrated monocular videos,2d human motion tracking,current input,human motion tracking,novel approach,human motion,time-varying patterns,image motion analysis,indexing terms,tracking,estimation,probability density
Human-body model,Computer vision,Local learning,Pattern recognition,Image matching,Computer science,Human motion,Pose,Artificial intelligence,Monocular,Probability density function,Match moving
Conference
ISSN
ISBN
Citations 
1522-4880 E-ISBN : 978-1-4244-5655-0
978-1-4244-5655-0
1
PageRank 
References 
Authors
0.37
10
5
Name
Order
Citations
PageRank
Wenzhong Wang111.04
Xiaoming Deng2687.59
Xianjie Qiu3386.58
Shihong Xia428726.18
Zhaoqi Wang522533.91