• Corpus ID: 42009824

Neural Network Based Static Sign Gesture Recognition System

  title={Neural Network Based Static Sign Gesture Recognition System},
  author={Parul Chaudhary and Hardeep S. Ryait},
Sign language is natural media of communication for the hearing and speech impaired all over the world This paper presents vision based static sign gesture recognition system using neural network. This system enables deaf people to interact easily and efficiently with normal people. The system firstly convert images of static gestures of American Sign Language into Lab color space where L for lightness and (a, b) for the color-opponent dimensions, from which skin region i.e. hand is segmented… 

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