Abstract

Falls are one of the most common problems in the elderly population. Therefore, each year more solutions for automatic fall detection are emerging. This paper proposes a single accelerometer algorithm for wearable devices that works for three different body locations: chest, waist and pocket, without a calibration step being required. This algorithm is able to be fully executed on a wearable device and no external devices are necessary for data processing. Additionally, a study of the accelerometer sampling rate, that allows the algorithm to achieve a better performance, was performed. The algorithm was validated with a continuous dataset with daily living activities and 272 simulated falls. Considering the trade-off between sensitivity and the number of false alarms the most suitable sampling rate found was 50 Hz. The proposed algorithm was able to achieve a trade-off of no false alarms and 89.5% of fall detection rate when wearing the sensor on the user’s waist with a medium sensitivity level of the algorithm. In conclusion, this paper presents a reliable solution for automatic fall detection that can be adapted to different usages and conditions, since it can be used in different body locations and its sensitivity can be adapted to different subjects according to their physical activity level.

Highlights

  • IntroductionFalls are one of the most common causes of death and injury

  • Among the elderly population, falls are one of the most common causes of death and injury

  • During a preliminary study it was verified that this type of movement was one of the most likely to trigger false positives (FPs)

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Summary

Introduction

Falls are one of the most common causes of death and injury. Besides the social and personal effects, falls play an important role in health-care costs. Some studies have made some relevant developments on fall prevention through gait stability assessment. Schooten et al [4] performed a study using wearable sensors to analyze the relation between common gait characteristics and the time to the fall. Their findings reveal that with the daily measurement of these gait characteristics it is possible to assess the elderly risk of falling

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