Paper
17 February 2010 MEMS-based sensing and algorithm development for fall detection and gait analysis
Piyush Gupta, Gabriel Ramirez, Donald Y. C. Lie, Tim Dallas, Ron E. Banister, Andrew Dentino
Author Affiliations +
Abstract
Falls by the elderly are highly detrimental to health, frequently resulting in injury, high medical costs, and even death. Using a MEMS-based sensing system, algorithms are being developed for detecting falls and monitoring the gait of elderly and disabled persons. In this study, wireless sensors utilize Zigbee protocols were incorporated into planar shoe insoles and a waist mounted device. The insole contains four sensors to measure pressure applied by the foot. A MEMS based tri-axial accelerometer is embedded in the insert and a second one is utilized by the waist mounted device. The primary fall detection algorithm is derived from the waist accelerometer. The differential acceleration is calculated from samples received in 1.5s time intervals. This differential acceleration provides the quantification via an energy index. From this index one may ascertain different gait and identify fall events. Once a pre-determined index threshold is exceeded, the algorithm will classify an event as a fall or a stumble. The secondary algorithm is derived from frequency analysis techniques. The analysis consists of wavelet transforms conducted on the waist accelerometer data. The insole pressure data is then used to underline discrepancies in the transforms, providing more accurate data for classifying gait and/or detecting falls. The range of the transform amplitude in the fourth iteration of a Daubechies-6 transform was found sufficient to detect and classify fall events.
© (2010) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Piyush Gupta, Gabriel Ramirez, Donald Y. C. Lie, Tim Dallas, Ron E. Banister, and Andrew Dentino "MEMS-based sensing and algorithm development for fall detection and gait analysis", Proc. SPIE 7593, Microfluidics, BioMEMS, and Medical Microsystems VIII, 75930U (17 February 2010); https://doi.org/10.1117/12.841963
Lens.org Logo
CITATIONS
Cited by 4 scholarly publications and 1 patent.
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Algorithm development

Gait analysis

Sensors

Detection and tracking algorithms

Detector development

Microelectromechanical systems

Transform theory

Back to Top