In this paper, we introduce DG3, an end-to-end method for exploiting gesture interaction in user interfaces. The method allows to declaratively model stroke gestures and their sub-parts, generating the training samples for the recognition algorithm. In addition, we extend the algorithms of the $-family for supporting the online (i.e., real-time ) stroke recognition and their parts, as declared in the models. Finally, we show that the method outperforms existing approaches for online recognition and has comparable accuracy with offline methods after a few gesture segments.
CITATION STYLE
Dessì, S., & Spano, L. D. (2020). DG3: Exploiting Gesture Declarative Models for Sample Generation and Online Recognition. Proceedings of the ACM on Human-Computer Interaction, 4(EICS). https://doi.org/10.1145/3397870
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