Abstract

Although wearable accelerometers can successfully recognize activities and detect falls, their adoption in real life is low because users do not want to wear additional devices. A possible solution is an accelerometer inside a wrist device/smartwatch. However, wrist placement might perform poorly in terms of accuracy due to frequent random movements of the hand. In this paper we perform a thorough, large-scale evaluation of methods for activity recognition and fall detection on four datasets. On the first two we showed that the left wrist performs better compared to the dominant right one, and also better compared to the elbow and the chest, but worse compared to the ankle, knee and belt. On the third (Opportunity) dataset, our method outperformed the related work, indicating that our feature-preprocessing creates better input data. And finally, on a real-life unlabeled dataset the recognized activities captured the subject’s daily rhythm and activities. Our fall-detection method detected all of the fast falls and minimized the false positives, achieving 85% accuracy on the first dataset. Because the other datasets did not contain fall events, only false positives were evaluated, resulting in 9 for the second, 1 for the third and 15 for the real-life dataset (57 days data).

Highlights

  • Automatic recognition of daily activities and estimation of energy expenditure may assist with proper management of pathologies such as obesity, diabetes and cardiovascular diseases [1]

  • In our study we thoroughly investigated this issue by first creating a machine learning (ML) model that recognizes activities of the user, compared the activity recognition (AR) performance of both left and right wrist sensors, and we investigated the AR performance of applying left-wrist AR model on the data provided by the right wrist sensor, and vice versa

  • The results show that the 21 falls that are triggered by the acceleration fall pattern (AFP) are recognized by the advanced method

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Summary

Introduction

Automatic recognition of daily activities and estimation of energy expenditure may assist with proper management of pathologies such as obesity, diabetes and cardiovascular diseases [1]. Moderate to vigorous physical activity is associated with decreased risk factors for obesity, cardiovascular and pulmonary diseases, cancer, depression, and increased bone health [2]. Falls are among the most critical health risks for the elderly [6]: approximately 30% of people over the age of 65 fall each year, and this proportion increases to 40% in those aged more than 70 [7]. Falls are critical when the elderly person is injured and cannot call for help. Automatic recognition of daily activities and detecting falls are two of the most important tasks and represent basic building blocks in numerous health and telecare systems

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