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Dynamic hand gesture recognition using centroid tracking

Journal Article


Abstract


  • In many dynamic hand gesture recognition contexts, time information is not adequately used. The extracted features of dynamic gestures usually do not carry explicit information about time in gesture classification. This results in under-utilized data for more important accurate classification. Another disadvantage is that the gesture classification is then confined to only simple gestures. We have overcome these limitations by introducing centroid tracking of hand gestures that captures and retains the time sequence information for feature extraction. This simplifies the classification of dynamic gestures as movement in time helps efficient classification without burdensome processing.

Publication Date


  • 2015

Citation


  • P. Premaratne, S. Yang, P. Vial & Z. Ifthikar, "Dynamic hand gesture recognition using centroid tracking," Lecture Notes in Computer Science, vol. 9225, pp. 623-629, 2015.

Scopus Eid


  • 2-s2.0-84943591151

Ro Metadata Url


  • http://ro.uow.edu.au/eispapers/4728

Number Of Pages


  • 6

Start Page


  • 623

End Page


  • 629

Volume


  • 9225

Abstract


  • In many dynamic hand gesture recognition contexts, time information is not adequately used. The extracted features of dynamic gestures usually do not carry explicit information about time in gesture classification. This results in under-utilized data for more important accurate classification. Another disadvantage is that the gesture classification is then confined to only simple gestures. We have overcome these limitations by introducing centroid tracking of hand gestures that captures and retains the time sequence information for feature extraction. This simplifies the classification of dynamic gestures as movement in time helps efficient classification without burdensome processing.

Publication Date


  • 2015

Citation


  • P. Premaratne, S. Yang, P. Vial & Z. Ifthikar, "Dynamic hand gesture recognition using centroid tracking," Lecture Notes in Computer Science, vol. 9225, pp. 623-629, 2015.

Scopus Eid


  • 2-s2.0-84943591151

Ro Metadata Url


  • http://ro.uow.edu.au/eispapers/4728

Number Of Pages


  • 6

Start Page


  • 623

End Page


  • 629

Volume


  • 9225