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International Journal of Academic Research in Business and Social Sciences

Open Access Journal

ISSN: 2222-6990

Assistive Technology for The Deaf: A Literature Review

Nur Amiratul Amira binti Nor Rashid, Asmak binti Asaari @ Kamaluddin, Syar Meeze Mohd Rashid

http://dx.doi.org/10.6007/IJARBSS/v14-i2/20828

Open access

Technology is advancing rapidly with various conveniences, tools, and aids to enhance the quality of human life. This also applies to the deaf community, who are not exempt from embracing and utilizing technology to facilitate their daily affairs, especially in terms of communication. Assistive technology is a supportive technology that can meet the needs of the deaf community in enhancing their abilities to perform daily tasks, regardless of the disabilities they may experience. Therefore, this literature review aims to identify relevant literature sources related to assistive technology developed for the deaf community. The study has analyzed 20 articles from the Google Scholar and Scopus databases. The research findings reveal that there are five mediums for developing assistive technology for the deaf community, including augmented reality, software, websites, mobile applications, and touch devices.

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(Rashid et al., 2024)
Rashid, N. A. A. binti N., Kamaluddin, A. binti A. @, & Rashid, S. M. M. (2024). Assistive Technology for The Deaf: A Literature Review. International Journal of Academic Research in Business and Social Sciences, 14(2), 612–623.