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Alert systems to hearing-impaired people: a systematic review

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Abstract

In recent years there has been a growing concern about the inclusion of people with disabilities in society. Many research in assistive technologies have been carried out, but with a significant disparity between support for the visually impaired and the hearing-impaired, with research referring to visual impairment accounting for more than 90% of them. Furthermore, an analysis of surveys related to the topic shows the low scientific production of assistive technologies for the hearing-impaired, and to our best knowledge, there is no survey specifically dedicated to alert systems for them. Considering this imbalance in scientific production and bearing in mind the positive impact that alert systems can have on the life of a hearing-impaired person, we present a survey in the scientific literature on alert systems specifically designed for people with hearing impairment. The survey aims to contribute to the scientific community in presenting the current scenario of these systems and directing future research, and contributing to people who can directly benefit from technological advances. A search in the Science Direct, IEEE Xplore, and ACM Digital Library databases for alert systems to hearing-impaired people in which mobile devices are involved returned 795 papers, 20 of which met the criteria defined at research protocol of the systematic literature review. These papers are described here, with notes and reflections on their usefulness, potentials, involved technologies, and possible improvements. We describe our findings of assistive systems for the hearing impaired, pointing out a gap in research in this field, as well as the possibilities for future work based on the data analyzed in this systematic literature review.

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All authors contributed to the study conception and design. Material preparation, data collection and analysis were performed by Cleyton Aparecido Dim, Rafael Martins Feitosa, Marcelle Pereira Mota and Jefferson Magalhães de Morais. The first version of the manuscript was written by Cleyton Aparecido Dim and was revised by Marcelle Pereira Mota and Jefferson Magalhães de Morais. All authors read approved the manuscript.

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Correspondence to Cleyton Aparecido Dim.

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Dim, C.A., Feitosa, R.M., Mota, M.P. et al. Alert systems to hearing-impaired people: a systematic review. Multimed Tools Appl 81, 32351–32370 (2022). https://doi.org/10.1007/s11042-022-13045-1

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