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Information Technology for Security System Based on Cross Platform Software

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Nanostructured Materials for the Detection of CBRN

Abstract

The technology, which is implemented with cross platform tools, is proposed for modeling of gesture units of sign language, animation between states of gesture units with a combination of gestures (words). Implemented technology simulates sequence of gestures using virtual spatial hand model and performs recognition of dactyl items from camera input. With the cross platform means technology achieves the ability to run on multiple platforms without re-implementing for each platform.

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Kondratiuk, S., Kruchynin, K., Krak, I., Kruchinin, S. (2018). Information Technology for Security System Based on Cross Platform Software. In: Bonča, J., Kruchinin, S. (eds) Nanostructured Materials for the Detection of CBRN. NATO Science for Peace and Security Series A: Chemistry and Biology. Springer, Dordrecht. https://doi.org/10.1007/978-94-024-1304-5_25

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