Abstract

Wearable Fall Detection Systems (FDSs) have gained much research interest during last decade. In this regard, Machine Learning (ML) classifiers have shown great efficiency in discriminating falls and conventional movements or Activities of Daily Living (ADLs) based on the analysis of the signals captured by transportable inertial sensors. Due to the intrinsic difficulties of training and testing this type of detectors in realistic scenarios and with their target audience (older adults), FDSs are normally benchmarked against a predefined set of ADLs and emulated falls executed by volunteers in a controlled environment. In most studies, however, samples from the same experimental subjects are used to both train and evaluate the FDSs. In this work, we investigate the performance of ML-based FDS systems when the test subjects have physical characteristics (weight, height, body mass index, age, gender) different from those of the users considered for the test phase. The results seem to point out that certain divergences (weight, height) of the users of both subsets (training ad test) may hamper the effectiveness of the classifiers (a reduction of up 20% in sensitivity and of up to 5% in specificity is reported). However, it is shown that the typology of the activities included in these subgroups has much greater relevance for the discrimination capability of the classifiers (with specificity losses of up to 95% if the activity types for training and testing strongly diverge).

Highlights

  • Falls among elderly are a cause of major concern for health systems

  • Wearable fall detection systems (FDSs) provide a cost-effective and non-invasive method to automatically discriminate falls from other activities of daily life basing on inertial signals

  • The most effective wearable fall detection systems in the literature are founded on machine learning algorithms that usually require a learning phase

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Summary

Introduction

Falls among elderly are a cause of major concern for health systems. According to the World Health Organization (WHO)[1], around 646,000 mortal falls occur each year in the world, while 37.3 million falls are severe enough to require medical attention. A FDS based on a ML classifier is trained with a dataset of labelled samples containing features computed from the measurements of the wearables and representing the two types of movements (falls and ADLs) that must be discriminated.

Results
Conclusion
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