Abstract

Falling is among the most damaging event elderly people may experience. With the ever-growing aging population, there is an urgent need for the development of fall detection systems. Thanks to the rapid development of sensor networks and the Internet of Things (IoT), human-computer interaction using sensor fusion has been regarded as an effective method to address the problem of fall detection. In this paper, we provide a literature survey of work conducted on elderly fall detection using sensor networks and IoT. Although there are various existing studies which focus on the fall detection with individual sensors, such as wearable ones and depth cameras, the performance of these systems are still not satisfying as they suffer mostly from high false alarms. Literature shows that fusing the signals of different sensors could result in higher accuracy and lower false alarms, while improving the robustness of such systems. We approach this survey from different perspectives, including data collection, data transmission, sensor fusion, data analysis, security, and privacy. We also review the benchmark data sets available that have been used to quantify the performance of the proposed methods. The survey is meant to provide researchers in the field of elderly fall detection using sensor networks with a summary of progress achieved up to date and to identify areas where further effort would be beneficial.

Highlights

  • More than nine percent of the population of China was aged 65 or older in 2015 and within 20 years (2017–2037) it is expected to reach 20%1

  • We provide a holistic overview of fall detection systems, which is aimed for a broad readership to become abreast with the literature in this field

  • To the best of our knowledge, there are no literature surveys that provide a holistic review of fall detection systems in terms of data acquisition, data analysis, data transport and storage, sensor networks and Internet of Things (IoT) platforms, as well as security and privacy, which are significant in the deployment of such systems

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Summary

INTRODUCTION

More than nine percent of the population of China was aged 65 or older in 2015 and within 20 years (2017–2037) it is expected to reach 20%1. According to the World Health Organization (WHO), around 646 k fatal falls occur each year in the world, the majority of whom are suffered by adults older than 65 years (WHO, 2018) This makes it the second reason for unintentional injury death, followed by road traffic injuries. Due to higher living standards and better medical resources, people in developed countries are more likely to have longer life expectancy, which results in a higher aging population in such countries (Bloom et al, 2011) In this survey paper, we provide a holistic overview of fall detection systems, which is aimed for a broad readership to become abreast with the literature in this field.

Types of Falls
Review of Previous Survey Papers
Key Results of Pioneering Papers
Strategy of the Literature Search
HARDWARE AND SOFTWARE COMPONENTS INVOLVED IN A FALL DETECTION SYSTEM
FALL DETECTION USING INDIVIDUAL SENSORS
Detection Using Threshold-Based and
SENSOR FUSION BY SENSOR NETWORK
Subjects and Data Sets
SECURITY AND PRIVACY
Security
Privacy
PROJECTS AND APPLICATIONS
Trends
Open Challenges
The rarity of data of real falls
Detection in real-time
Platform of sensor fusion
Scalability and flexibility
Findings
SUMMARY AND CONCLUSIONS
Full Text
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