Features and Classification Schemes for View-Invariant and Real-Time Human Action Recognition

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TitreFeatures and Classification Schemes for View-Invariant and Real-Time Human Action Recognition
Type de publicationJournal Article
Year of Publication2018
AuteursTalha SAhmed Wali, Hammouche M, Ghorbel E, Fleury A, Ambellouis S
JournalIEEE TRANSACTIONS ON COGNITIVE AND DEVELOPMENTAL SYSTEMS
Volume10
Pagination894-902
Date PublishedDEC
Type of ArticleArticle
ISSN2379-8920
Mots-clésBody-part directional velocity, Gaussian mixture model (GMM), hidden Markov model (HMM), human action recognition (HAR), human-robot interaction, skeleton analysis
Résumé

Human action recognition (HAR) is largely used in the field of ambient assisted living to create an interaction between humans and computers. In these applications, it cannot be asked for people to act nonnaturally. The algorithm has to adapt and the interaction has to be as quick as possible to make it fluent. to improve the existing algorithms with regards to these points, we propose a novel method based on skeleton information provided by RGB-D cameras. This approach is able to carry out early action recognition and is more robust to viewpoint variability. To reach this goal, a new descriptor called body directional velocity is proposed and a real-time classification is performed. Experimental results on four benchmarks show that our method competes with various skeleton-based HAR algorithms. We also show the suitability of our method for early recognition of human actions.

DOI10.1109/TCDS.2018.2844279