Abstract

Fall detection (FD) systems are important assistive technologies for healthcare that can detect emergency fall events and alert caregivers. However, it is not easy to obtain large-scale annotated fall events with various specifications of sensors or sensor positions during the implementation of accurate FD systems. Moreover, the knowledge obtained through machine learning has been restricted to tasks in the same domain. The mismatch between different domains might hinder the performance of FD systems. Cross-domain knowledge transfer is very beneficial for machine-learning based FD systems to train a reliable FD model with well-labeled data in new environments. In this study, we propose domain-adaptive fall detection (DAFD) using deep adversarial training (DAT) to tackle cross-domain problems, such as cross-position and cross-configuration. The proposed DAFD can transfer knowledge from the source domain to the target domain by minimizing the domain discrepancy to avoid mismatch problems. The experimental results show that the average F1-score improvement when using DAFD ranges from 1.5% to 7% in the cross-position scenario, and from 3.5% to 12% in the cross-configuration scenario, compared to using the conventional FD model without domain adaptation training. The results demonstrate that the proposed DAFD successfully helps to deal with cross-domain problems and to achieve better detection performance.

Highlights

  • Falls are one of the main health risks to old people

  • We firstly propose a domain-adaptive fall detection (DAFD) model that could transfer knowledge from the source domain to the target domain by minimizing the domain discrepancy for cross-position and crossconfiguration problems

  • The experimental results demonstrate that the detection performance of the proposed DAFD system is better than that of the “Source-only”

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Summary

Introduction

Falls are one of the main health risks to old people. The World Health Organization (WHO) has reported that about 28% of people over 65 years of age fall at least once each year [1]. To provide timely intervention for fallers, fall detection (FD) alarm systems have become an important research topic in assistive technology and tele-healthcare. FD alarm systems with advanced wireless sensor networks and pattern recognition techniques have the capability to detect the occurrence of fall events in daily living and inform clinical professionals of emergency events. Such alarm systems could alleviate the psychological stress of old people and caregivers [2]

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