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Sign Language Detection
Published Online: March-April 2023
Pages: 72-75
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Abstract: The Sign language is used by deaf and hard of-hearing people, as well as those who are unable to speak vocally, to communicate within their groups and with others. A group of predetermined languages known as sign languages use a visual-manual modality to convey information. Real-time finger spelling recognition in Sign Language presents a conundrum that is examined. Using webcam photos, we produced a dataset for the usual hand gestures used in a dataset for the identification of 36 different gestures of alphabets and numbers. A hand motion is accepted as input, and the system instantly displays the recognised character as text and audio. Different human computer interaction methods for posture recognition were researched and assessed during the project. An assortment of image processing strategies with human movement classification were shown to be the best answer. The technology can accurately identify selected Sign Language signs even in poor light and with an uncontrolled background. By developing algorithms that can instantly predict the alphanumeric hand gestures used in sign language, this initiative aims to close the communication gap. The major objective of this project is to develop an intelligent computer-based system that will enable deaf people to efficiently communicate with others by using hand gestures.
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