Applied Sciences (Sep 2023)

Fall Detection Approaches for Monitoring Elderly HealthCare Using Kinect Technology: A Survey

  • Moustafa Fayad,
  • Mohamed-Yacine Hachani,
  • Kamal Ghoumid,
  • Ahmed Mostefaoui,
  • Samir Chouali,
  • Fabien Picaud,
  • Guillaume Herlem,
  • Isabelle Lajoie,
  • Réda Yahiaoui

DOI
https://doi.org/10.3390/app131810352
Journal volume & issue
Vol. 13, no. 18
p. 10352

Abstract

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The severity of falls increases with age and reduced mobility. Falls are a frequent source of domestic accidents and accidental death on the part of fragile people. They produce anatomical injuries, reduce quality of life, cause dramatic psychological effects, and impose heavy financial burdens. A growing elderly population leads to a direct increase in health service costs, and indirectly to a deterioration of social life in the long term. Unsurprisingly, socioeconomic costs have triggered new scientific health research to detect falls in older people. One of the most appropriate solutions for monitoring the elderly and automatically detecting falls is computer vision. The Kinect camera plays a vital role in recognizing and detecting activities while ensuring seniors’ comfort, safety, and privacy preferences in the fall detection system. This research surveys several Kinect-based works in the literature that cover the approaches used in fall detection. In addition, we discuss the public fall benchmark based on Kinect technology. In general, the main objective of this survey is to provide a complete description of the modules making up the fall detectors and thereby guide researchers in developing fall approaches based on Kinect.

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