DocumentCode :
21472
Title :
Attribute Regularization Based Human Action Recognition
Author :
Zhong Zhang ; Chunheng Wang ; Baihua Xiao ; Wen Zhou ; Shuang Liu
Author_Institution :
State Key Lab. of Manage. & Control of Complex Syst., CASIA, Beijing, China
Volume :
8
Issue :
10
fYear :
2013
fDate :
Oct. 2013
Firstpage :
1600
Lastpage :
1609
Abstract :
Recently, attributes have been introduced as a kind of high-level semantic information to help improve the classification accuracy. Multitask learning is an effective methodology to achieve this goal, which shares low-level features between attributes and actions. Yet such methods neglect the constraints that attributes impose on classes, which may fail to constrain the semantic relationship between the attributes and actions. In this paper, we explicitly consider such attribute-action relationship for human action recognition, and correspondingly, we modify the multitask learning model by adding attribute regularization. In this way, the learned model not only shares the low-level features, but also gets regularized according to the semantic constrains. In addition, since attribute and class label contain different amounts of semantic information, we separately treat attribute classifiers and action classifiers in the framework of multitask learning for further performance improvement. Our method is verified on three challenging datasets (KTH, UIUC, and Olympic Sports), and the experimental results demonstrate that our method achieves better results than that of previous methods on human action recognition.
Keywords :
image motion analysis; image recognition; learning (artificial intelligence); KTH; Olympic Sports; UIUC; attribute regularization; classification accuracy; high-level semantic information; human action recognition; multitask learning; multitask learning model; semantic constrains; semantic information; semantic relationship; Histograms; Learning systems; Optimization; Prediction algorithms; Semantics; Vectors; Videos; Attribute regularization; human action; multitask learning;
fLanguage :
English
Journal_Title :
Information Forensics and Security, IEEE Transactions on
Publisher :
ieee
ISSN :
1556-6013
Type :
jour
DOI :
10.1109/TIFS.2013.2258152
Filename :
6502237
Link To Document :
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