Abstract

Everyday life of the elderly and impaired population living in smart homes is challenging because of possible accidents that may occur due to daily activities. In such activities, persons often lean over (to reach something) and, if they not cautious, are prone to falling. To identify fall incidents, which could stochastically cause serious injuries or even death, we propose specific temporal inference models; namely, CM-I and CM-II. These models can infer a fall incident based on classification methods by exploiting wearable Internet of Things (IoT) altimeter sensors adopted by seniors. We analyzed real and synthetic data of fall and lean over incidents to test the proposed models. The results are promising for incorporating such inference models to assist healthcare for fall verification of seniors in smart homes. Specifically, the CM-II model achieved a prediction accuracy of 0.98, which is the highest accuracy when compared to other models in the literature under the McNemar’s test criterion. These models could be incorporated in wearable IoT devices to provide early warning and prediction of fall incidents to clinical doctors.

Highlights

  • The elderly and impaired population will soon live in smart homes [1]

  • The discovery of groundbreaking architectures such as hierarchical computing architecture (HiCH), when blended with concepts like the convolutional neural network (CNN), enables Internet of Things (IoT) devices to step beyond the limitations of inaccuracy in a wireless body area network (WBAN)

  • We analyzed 86 videos randomly retrieved from YouTube: 41 depict a fall incident, while the remaining 45 describe lean over movements of elderly and impaired individuals living in smart homes

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Summary

Introduction

The elderly and impaired population will soon live in smart homes [1]. Such homes provide a pleasant and safe place for seniors. Current Internet of Things (IoT) technology provides methods and models to prevent time-critical situations and emergency incidents [3]. Such technology enables analytic models to infer whether an incident is an emergency or not. Clinical doctors will be able to utilize these models at a given emergency incident proactively and to provide immediate first aid to elderly and impaired persons. At this point, it is noteworthy that deep learning has paved the way for massive breakthroughs in the healthcare field. Public Health 2020, 17, 408; doi:10.3390/ijerph17020408 www.mdpi.com/journal/ijerph

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