Image-based Indian Sign Language Recognition: A Practical Review using Deep Neural Networks
Mallikharjuna Rao K, Harleen Kaur, Sanjam Kaur Bedi, and M A Lekhana

TL;DR
This paper reviews the development of a real-time Indian Sign Language recognition system using deep neural networks, achieving high accuracy and addressing communication barriers for the deaf community in India.
Contribution
It presents a practical CNN-based sign language recognition system specifically for Indian Sign Language, with detailed image processing and high accuracy.
Findings
Achieved 99% recognition accuracy.
Developed a real-time sign language translation system.
Utilized computer vision techniques for image preprocessing.
Abstract
People with vocal and hearing disabilities use sign language to express themselves using visual gestures and signs. Although sign language is a solution for communication difficulties faced by deaf people, there are still problems as most of the general population cannot understand this language, creating a communication barrier, especially in places such as banks, airports, supermarkets, etc. [1]. A sign language recognition(SLR) system is a must to solve this problem. The main focus of this model is to develop a real-time word-level sign language recognition system that would translate sign language to text. Much research has been done on ASL(American sign language). Thus, we have worked on ISL(Indian sign language) to cater to the needs of the deaf and hard-of-hearing community of India[2]. In this research, we provide an Indian Sign Language-based Sign Language recognition system.…
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Taxonomy
TopicsHand Gesture Recognition Systems · Hearing Impairment and Communication · Gait Recognition and Analysis
