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Sign Language Detector

Jogender Singh, Shubham Kumar, Anuj Kumar

Abstract


Sign language is used all over the world by the dumb people and by whom are disabled to communicate with each other. Dumb people all through the world use gestures to communicate with others. Some individuals are uncommonly prepared to understand this gesture based communication. Be that as it may, ordinary individuals are not ready to comprehend what the stupid and hard of hearing individuals are endeavoring to state. Sign language is more than moving fingers or hands, it is a viable and visible language in which gestures and facial expressions play a very important role. These signs can be adequately utilized most definitely with human is concerned however as for communication with machines better procedures and algorithms must be created. The progression in research work build up an interpreter between dumb people and the rest world via gestures.

 

Keywords: Sign language detector, flex sensor


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References


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