DocumentCode
1413645
Title
Real-Time Probabilistic Covariance Tracking With Efficient Model Update
Author
Wu, Yi ; Cheng, Jian ; Wang, Jinqiao ; Lu, Hanqing ; Wang, Jun ; Ling, Haibin ; Blasch, Erik ; Bai, Li
Volume
21
Issue
5
fYear
2012
fDate
5/1/2012 12:00:00 AM
Firstpage
2824
Lastpage
2837
Abstract
The recently proposed covariance region descriptor has been proven robust and versatile for a modest computational cost. The covariance matrix enables efficient fusion of different types of features, where the spatial and statistical properties, as well as their correlation, are characterized. The similarity between two covariance descriptors is measured on Riemannian manifolds. Based on the same metric but with a probabilistic framework, we propose a novel tracking approach on Riemannian manifolds with a novel incremental covariance tensor learning (ICTL). To address the appearance variations, ICTL incrementally learns a low-dimensional covariance tensor representation and efficiently adapts online to appearance changes of the target with only computational complexity, resulting in a real-time performance. The covariance-based representation and the ICTL are then combined with the particle filter framework to allow better handling of background clutter, as well as the temporary occlusions. We test the proposed probabilistic ICTL tracker on numerous benchmark sequences involving different types of challenges including occlusions and variations in illumination, scale, and pose. The proposed approach demonstrates excellent real-time performance, both qualitatively and quantitatively, in comparison with several previously proposed trackers.
Keywords
clutter; computational complexity; covariance matrices; learning (artificial intelligence); object tracking; particle filtering (numerical methods); probability; statistical analysis; tensors; Riemannian manifolds; background clutter; computational complexity; covariance matrix; covariance region descriptor; efficient model update; image features; low-dimensional covariance tensor representation; novel incremental covariance tensor learning; particle filter framework; probabilistic ICTL tracker; real-time probabilistic covariance tracking approach; spatial propery; statistical property; Adaptation models; Covariance matrix; Feature extraction; Manifolds; Target tracking; Tensile stress; Covariance descriptor; Riemannian manifolds; incremental learning; model update; particle filter; visual tracking; Algorithms; Artificial Intelligence; Computer Systems; Image Enhancement; Image Interpretation, Computer-Assisted; Pattern Recognition, Automated; Reproducibility of Results; Sensitivity and Specificity;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2011.2182521
Filename
6121949
Link To Document