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Sign Language: A Review

Jagdish Singh

Abstract


Individuals who are hard of hearing or crippled all around the world utilize communication via gestures to speak with each other. People who are dumb all over the world use gestures to communicate with one another. Gesture-based communication can be comprehended by some individuals with exceptional ease. However, the average person cannot comprehend what the deaf and hard-of-hearing individuals are attempting to convey. Correspondence through marking is more than moving fingers or hands, it is a functional and perceptible language wherein signals and looks expect a crucial part. These signs can certainly be used effectively for human communication; However, improved procedures and algorithms must be developed for machine communication. A gesture interpreter is created between dumb people and the rest of the world as the research progresses.


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References


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