6 CONCLUSIONS
In this paper we have presented a pipelined algorithm
that derives temporal-spatial and dynamic gait
parameters from skeletal data streams. Due to the
marker- and contact-less approach and the resulting
low effort the DynMetrics system which incorporates
the devised algorithms is able to be used in daily
clinical practice.
In order to give evidence for this we have used
system to track gait improvements for patients in need
of orthopaedic aids, i.e. according footwear and/or
insoles. Specifically tailoring such aids to the
individual patient is crucial to improve locomotion
and avoid pain. It could be shown that by featuring
the system the effect of using orthopedic additives
can be captured by objective, quantitative metrics
thus supporting the attending physician to direct the
prescription of compensating measures. In our basic
study we were able to nail down the differences in
essential gait parameters for patients with and without
those additives.
DynMetrics turned out to be suitable to capture
the according data in reasonable time without major
preparation effort. As expected, the additives can
have a positive influence on the walking speed, stride
length and cadence. Moreover, pain as measured by
VAS can be lessened by the use of these additives. In
addition to the use cases (orthopaedic and
neurological rehabilitation), the presented algorithm
can also be applied to other scenarios. Recently
(Henderson, Gordon, & Vijayakumar, 2017) show
that step width, medio-lateral displacement and BoS
are invariant to walking conditions and may provide
a robust metric in order to evaluate and compare
wearable robots or exoskeletons.
ACKNOWLEDGEMENTS
Partial support for the work was provided by Interreg-
Project MIND No. 151131-R4-1.
REFERENCES
Berg, K. O., Wood-Dauphinee, S. L., Williams, J. I., &
Maki, B. (1992). Measuring balance in the elderly:
validation of an instrument. Canadian journal of public
health, pp. 1073–1080. doi:ISSN 0003-9993
Eikerling, H.-J., Uelschen, M., & Lutterbeck, L. (2016).
Scalable Distributed Sensor Network for Contact-less
Gait Analysis - A Marker-less, Sensor-based System
for Steering Rehabilitation Measures. 9th International
Joint Conference on Biomedical Engineering Systems
and Technologies. Rome.
Götz-Neumann, K. (2015). Gehen verstehen (4. Auflage).
Stuttgart: Georg Thieme Verlag.
Hak, L., van Dieën, J., van der Wurff, P., & Houdijk, H.
(2014). Stepping asymmetry among individuals with
unilateral transtibial limb loss might be functional in
terms of gait stability. Physical Therapy, pp. 1480-
1488.
Hanavan, E. (1964). A mathematical model of the human
body. Air force aerospace medical research lab Wright-
Patterson AFB OH.
Henderson, G., Gordon, D., & Vijayakumar, S. (2017).
Identifying invariant gait metrics for exoskeleton
assistance. 2017 IEEE International Conference on
Robotics and Biomimetics (ROBIO). Macau.
Hof, A., Gazendam, M., & Sinke, W. (2005). The condition
for dynamic stability. Journal of Biomechanics, pp. 1-
8.
Perry, J., & Burnfield, J. (2010). Gait Analysis (2nd
edition). Thorofare: SLACK Incorporated.
Scholkmann, F., Boss, J., & Wolf, M. (2012). An Efficient
Algorithm for Automatic Peak Detection in Noisy
Periodic and Quasi-Periodic Signals. Algorithms, pp.
588-603.
Shumway-Cook, A., & Woollacott, M. (2017). Motor
Control: Translating Research Into Clinical Practice
(5th ed). Philadelphia: Wolters Kluwer.
Uelschen, M., & Eikerling, H.-J. (2015). A Mobile Sensor
System for Gait Analysis supporting the Assessment of
Rehabilitation Measures. Proceedings of the 6th ACM
Conference on Bioinformatics, Computational Biology
and Health Informatics (BCB '15) (pp. 96-105). New
York: ACM.
Van Criekinge, T., Saeys, W., Hallemans, A., Velghe, S.,
Viskens, P., Vereeck, L., . . . S., T. (2017, May). Trunk
biomechanics during hemiplegic gait after stroke: A
systematic review. Gait Posture, pp. 133-143.
doi:10.1016/j.gaitpost.2017.03.004
VICON. (2017). Plug-In Gait Reference System. Vicon
Motion Systems.
Winter, D. (2009). Biomechanics and Motor Control of
Human Movement (4th edition). Hoboken: Wiley.
Wu, M., Brown, G., & Gordon, K. (2017). Control of
locomotor stability in stabilizing and destabilizing
environments. Gait & Posture, pp. 191-196.
An Efficient Algorithm for Kinematics Estimation with Application to Dynamic Gait Stability using a Contact-less Skeleton Tracking