Hardware/Software Co-design of Fractal Features based Fall Detection System

Sensors (Basel). 2020 Apr 18;20(8):2322. doi: 10.3390/s20082322.

Abstract

Falls are a leading cause of death in older adults and result in high levels of mortality, morbidity and immobility. Fall Detection Systems (FDS) are imperative for timely medical aid and have been known to reduce death rate by 80%. We propose a novel wearable sensor FDS which exploits fractal dynamics of fall accelerometer signals. Fractal dynamics can be used as an irregularity measure of signals and our work shows that it is a key discriminant for classification of falls from other activities of life. We design, implement and evaluate a hardware feature accelerator for computation of fractal features through multi-level wavelet transform on a reconfigurable embedded System on Chip, Zynq device for evaluating wearable accelerometer sensors. The proposed FDS utilises a hardware/software co-design approach with hardware accelerator for fractal features and software implementation of Linear Discriminant Analysis on an embedded ARM core for high accuracy and energy efficiency. The proposed system achieves 99.38% fall detection accuracy, 7.3× speed-up and 6.53× improvements in power consumption, compared to the software only execution with an overall performance per Watt advantage of 47.6×, while consuming low reconfigurable resources at 28.67%.

Keywords: FPGA; classification; embedded system on chip; fall detection; fractal features; hardware software co-design; machine learning; reconfigurable design; wearable sensors.

MeSH terms

  • Accidental Falls*
  • Activities of Daily Living
  • Algorithms
  • Equipment Design
  • Humans
  • Machine Learning
  • Software*
  • Wearable Electronic Devices