Developing a Prototype to Translate Pakistan Sign Language into Text and Speech While Using Convolutional Neural Networking

Abstract

The purpose of the study is to provide a literature review of the work done on sign language in Pakistan and the world. This study also provides a framework of an already developed prototype to translate Pakistani sign language into speech and text while using convolutional neural networking (CNN) to facilitate unimpaired teachers to bridge the communication gap among the deaf learners and unimpaired teachers. Due to the lack of sign language teaching, unimpaired teachers face difficulty in communicating with impaired learners. This communication gap can be filled with the help of this translation tool. Research indicates that a prototype has been evolved that can translate the English textual content into sign language and highlighted that there is a need for translation tool which can translate the signs into English text. The current study will provide an architectural framework of the Pakistani sign language to English text translation tool that how different components of technology like deep learning, convolutional neural networking, python, tensor Flow, and NumPy, InceptionV3 and transfer learning, eSpeak text to speech help in the development of a translation tool prototype. Keywords: Pakistan sign language (PSL), sign language (SL), translation, deaf, unimpaired, convolutional neural networking (CNN). DOI: 10.7176/JEP/10-15-18 Publication date:May 31st 201

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