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Gesture Recognition for VW & VO: Virtual Writing and Virtual Operation

Published:21 March 2016Publication History

ABSTRACT

Modern era of research is motivated to optimize the hardware parts involved during the process of interaction. The idea is to deploy virtual environment for performing the daily routine tasks and social aspects of people. Virtualization provides the interface for performing the task and there is no need of hardware device space. Due to limited hardware space and human err, researchers emphasize use of virtual environment in computer human interaction. Mostly users prefer hand for giving the input task to the system and they are bounded to directly interact with system. Virtual writing and virtual operation is the ongoing research problem, where industries and laboratory are investing maximum effort. The developed gestured system has a lot of scope for improvements with research gazing at accuracy of recognition. In this paper author give the valuable contribution into gestured recognition. Two threads of gestured characteristics are considered for social application to improve the collaborative interaction of human to system.

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  • Published in

    cover image ACM Other conferences
    WIR '16: Proceedings of the ACM Symposium on Women in Research 2016
    March 2016
    179 pages
    ISBN:9781450342780
    DOI:10.1145/2909067

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    Publication History

    • Published: 21 March 2016

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    WIR '16 Paper Acceptance Rate35of117submissions,30%Overall Acceptance Rate35of117submissions,30%

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