Abstract

Research on fall and movement detection with wearable devices has witnessed promising growth. However, there are few publicly available datasets, all recorded with smartphones, which are insufficient for testing new proposals due to their absence of objective population, lack of performed activities, and limited information. Here, we present a dataset of falls and activities of daily living (ADLs) acquired with a self-developed device composed of two types of accelerometer and one gyroscope. It consists of 19 ADLs and 15 fall types performed by 23 young adults, 15 ADL types performed by 14 healthy and independent participants over 62 years old, and data from one participant of 60 years old that performed all ADLs and falls. These activities were selected based on a survey and a literature analysis. We test the dataset with widely used feature extraction and a simple to implement threshold based classification, achieving up to 96% of accuracy in fall detection. An individual activity analysis demonstrates that most errors coincide in a few number of activities where new approaches could be focused. Finally, validation tests with elderly people significantly reduced the fall detection performance of the tested features. This validates findings of other authors and encourages developing new strategies with this new dataset as the benchmark.

Highlights

  • The number of elderly people living alone has been continuously growing worldwide.This independence comes with the risk of not receiving prompt attention if an accident occurs

  • The purpose of this work is to provide a benchmark for other researchers on the fall and movement detection field, and to address two rarely discussed open issues: training with young people features intended for elderly people, and setting-up algorithms for maximum accuracy instead of maximum sensitivity

  • In this paper we presented and released SisFall, a fall and movement dataset acquired with 38 participants (15 of them elderly people)

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Summary

Introduction

The number of elderly people living alone has been continuously growing worldwide.This independence comes with the risk of not receiving prompt attention if an accident occurs. Not receiving attention in the first hour of the accident increases the risk of death and chronic affections [5] This issue has been widely addressed in recent years with systems that detect falls in elderly people, and generate a prompt alert that can reduce the consequences related to medical attention response time [6]. These systems have acceptance among the objective population as a way to support their independence and reduce their fear of falling [7]

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