Abstract

Fall detection is a very important challenge that affects both elderly people and the carers. Improvements in fall detection would reduce the aid response time. This research focuses on a method for fall detection with a sensor placed on the wrist. Falls are detected using a published threshold-based solution, although a study on threshold tuning has been carried out. The feature extraction is extended in order to balance the dataset for the minority class. Alternative models have been analyzed to reduce the computational constraints so the solution can be embedded in smart-phones or smart wristbands. Several published datasets have been used in the Materials and Methods section. Although these datasets do not include data from real falls of elderly people, a complete comparison study of fall-related datasets shows statistical differences between the simulated falls and real falls from participants suffering from impairment diseases. Given the obtained results, the rule-based systems represent a promising research line as they perform similarly to neural networks, but with a reduced computational cost. Furthermore, support vector machines performed with a high specificity. However, further research to validate the proposal in real on-line scenarios is needed. Furthermore, a slight improvement should be made to reduce the number of false alarms.

Highlights

  • Fall Detection (FD) is a very active research area, with many applications in health care, work safety, etc. [1]

  • This research focuses on fall detection for elderly people

  • One of them was chosen for deployment and improvement with the premise of a reduced computational cost because it has to be implemented on wearable sensors

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Summary

Introduction

Fall Detection (FD) is a very active research area, with many applications in health care, work safety, etc. [1]. There are basically two types of FD systems: context-aware systems and wearable devices [4,5]. FD has been widely studied using context-aware systems, i.e., video systems [6]; the use of wearable devices is crucial because of the high percentage of elderly people and their desire to live autonomously in their own house [7]. Wearable-based solutions may combine different sensors, such as a barometer and inertial sensors [8], 3DACC combined with other devices, like a gyroscope [9], intelligent tiles [10] or a barometer in a necklace [11].

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