Classification of Fall Detection System for Elderly: Systematic Review

Main Article Content

Ainul Husna Mohd Yusoff et.al

Abstract

Elderly are the world’s largest growing population, categorized over the age of 60 to 65 years. They are the ones who prone to fall due to their old age and low self-efficacy, thus making them vulnerable to different accidents. Even doing daily activities can also expose the elderly to a fall incident. As a result, it has gained the attention of many researchers in conducting studies related to the elderly daily health care, especially in relation to the fall detection system. This paper aims to provide a systematic review on the classification of fall detection systems for the elderly. This systematic review is designed based on the existing and extensive literature review on fall detection systems guided by the prisma statement (preferred reporting items for systematic reviews and meta-analyses) review method. Based on this systematic review, four overarching themes that provide in-depth information on fall detection to detect fall events have been identified; classification of fall detection, basis development, type of sensor and detection technique. In a nutshell, the fall detection approach has successfully provided an alternative health care services for elderly who choose to live independently. Therefore, it is important to continue to develop a fall detection system that integrates with technology in order to provide a safe living environment for elderly, and for children, it can offer as an alternative for monitoring systems.

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How to Cite
et.al, A. H. M. Y. (2021). Classification of Fall Detection System for Elderly: Systematic Review. Turkish Journal of Computer and Mathematics Education (TURCOMAT), 12(3), 1769–1780. Retrieved from https://turcomat.org/index.php/turkbilmat/article/view/1004
Section
Research Articles