Hand Sign to Bangla Speech: A Deep Learning in Vision Based System for Recognizing Hand Sign Digits and Generating Bangla Speech

9 Pages Posted: 14 Jun 2019

See all articles by Shahjalal Ahmed

Shahjalal Ahmed

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh

Md. Rafiqul Islam

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh

Jahid Hassan

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh

Minhaz Uddin Ahmed

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh

Bilkis Jamal Ferdosi

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh

Sanjay Saha

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh

Md. Shopon

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh

Date Written: February 24, 2019

Abstract

Recent advancements in the field of computer vision with the help of deep neural networks have led us to explore and develop many existing challenges that were once unattended due to the lack of necessary technologies. Hand Sign/Gesture Recognition is one of the significant areas where the deep neural network is making a substantial impact. In the last few years, a large number of researches has been conducted to recognize hand signs and hand gestures, which we aim to extend to our mother-tongue, Bangla (also known as Bengali). The primary goal of our work is to make an automated tool to aid the people who are unable to speak. We developed a system that automatically detects hand sign based digits and speaks out the result in Bangla language. According to the report of the World Health Organization (WHO), 15% of people in the world live with some kind of disabilities. Among them, individuals with communication impairment such as speech disabilities experience substantial barrier in social interaction. The proposed system can be invaluable to mitigate such a barrier. The core of the system is built with a deep learning model which is based on convolutional neural networks (CNN). The model classifies hand sign based digits with 92% accuracy over validation data which ensures it a highly trustworthy system. Upon classification of the digits, the resulting output is fed to the text to speech engine and the translator unit eventually which generates audio output in Bangla language.

Suggested Citation

Ahmed, Shahjalal and Islam, Md. Rafiqul and Hassan, Jahid and Ahmed, Minhaz Uddin and Ferdosi, Bilkis Jamal and Saha, Sanjay and Shopon, Md., Hand Sign to Bangla Speech: A Deep Learning in Vision Based System for Recognizing Hand Sign Digits and Generating Bangla Speech (February 24, 2019). Proceedings of International Conference on Sustainable Computing in Science, Technology and Management (SUSCOM), Amity University Rajasthan, Jaipur - India, February 26-28, 2019, Available at SSRN: https://ssrn.com/abstract=3358187 or http://dx.doi.org/10.2139/ssrn.3358187

Shahjalal Ahmed (Contact Author)

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh ( email )

Md. Rafiqul Islam

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh ( email )

Jahid Hassan

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh ( email )

Minhaz Uddin Ahmed

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh ( email )

Bilkis Jamal Ferdosi

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh ( email )

Sanjay Saha

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh ( email )

Md. Shopon

Department of Computer Science and Engineering,University of Asia Pacific, Dhaka – 1205, Bangladesh ( email )

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