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Article

Automatic individual calibration in fall detection – an integrative ambulatory measurement framework

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Pages 504-510 | Received 27 Apr 2011, Accepted 23 Sep 2011, Published online: 08 Dec 2011
 

Abstract

The objective of the current study was to demonstrate the utility of a new integrative ambulatory measurement (IAM) framework by developing and evaluating an individual calibration function in fall detection application. Ten healthy elderly persons were involved in a laboratory study and tested in a protocol comprising various types of activities of daily living and slip-induced backward falls. Inertial measurement units attached to the trunk and thigh segments were used to measure trunk angular kinematics and thigh accelerations. The effect of individual calibration was evaluated with previously developed fall detection algorithm. The results indicated that with individual calibration, the fall detection performance achieved approximately the same level of sensitivity (100% vs. 100%) and specificity (95.25% vs. 95.65%); however, response time was significantly lower than without (249 ms vs. 255 ms). It was concluded that the automatic individual calibration using the IAM framework improves the performance of fall detection, which has a greater implication in preventing/minimising injuries associated with fall accidents.

Acknowledgements

This research was supported by the National Institute of Health Grant L30AG022963-02A1. The paper's contents are solely the responsibility of the authors and do not necessarily represent the official views of the NIH.

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