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A real-time hand-signs segmentation and classification system using fuzzy rule based RGB model and grid-pattern analysis

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Acknowledgement

This research is partially supported and funded by the Information and Communication Technology (ICT) Division, Ministry of Posts, Telecommunications and IT, Government of the People’s Republic of Bangladesh.

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Correspondence to Muhammad Aminur Rahaman.

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A Real-Time Hand-Signs Segmentation And Classification System Using Fuzzy Rule Based RGB Model And Grid-Pattern Analysis

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Rahaman, M.A., Jasim, M., Ali, M.H. et al. A real-time hand-signs segmentation and classification system using fuzzy rule based RGB model and grid-pattern analysis. Front. Comput. Sci. 12, 1258–1260 (2018). https://doi.org/10.1007/s11704-018-7082-4

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