In this research, we hypothesize that head-mounted accelerometric sensors can be effectively utilized in the tasks of motion activity classification and balance control evaluation, on a par with conventional methods based on stabilometric platforms. Following this hypothesis, we carried out a series of short experiments with stabilometric system “Stabilan-01-2” and consumer-grade tri-axial accelerometer. Collected motion signals were batch-processed and passed through feature extraction pipeline. After that, characteristic spaces were formed and classified using statistical machine learning methods. Results of the classification indicated that feature space of accelerometric data is informative enough to accurately classify motion activity associated with balance control, thus confirming our initial hypothesis. These results demonstrate that accelerometers can be used as a low-costly and portable alternative to stabilometric systems, and suggest a promising and novel approach to balance control assessment.

1.
J.L.
Alberts
,
J.R.
Hirsch
,
M.M.
Koop
,
D.D.
Schindler
,
D.E.
Kana
,
S.M.
Linder
,
S.
Campbell
, and
A.K.
Thota
,
Journal of Athletic Training
50
,
578
(
2015
).
2.
G.
Biagetti
,
P.
Crippa
,
L.
Falaschetti
,
G.
Tanoni
, and
C.
Turchetti
,
Procedia Computer Science
126
,
1977
(
2018
).
3.
V.
Borisov
,
A.
Syskov
, and
V.
Kublanov
, in
World Congress on Medical Physics and Biomedical Engineering 2018
, edited by
L.
Lhotska
,
L.
Sukupova
,
I.
Lacković
, and
G.S.
Ibbott
(
Springer Singapore
,
Singapore
,
2019
), pp.
71
75
.
4.
R.P.
Hubble
,
G.A.
Naughton
,
P.A.
Silburn
, and
M.H.
Cole
,
PLOS ONE
10
,
e0123705
(
2015
).
5.
A.
Kos
,
S.
Tomažič
, and
A.
Umek
,
Sensors
16
,
301
(
2016
).
6.
V.S.
Kublanov
,
D.R.
Yamaliev
,
A.Y.
Dolganov
, and
E.A.
Goncharova
, in
2017 Siberian Symposium on Data Science and Engineering (SSDSE)
(
2017
), pp.
49
54
.
7.
V.E.
Pettorossi
and
M.
Schieppati
,
Frontiers in Human Neuroscience
8
, (
2014
).
8.
J.P.
Salisbury
,
N.U.
Keshav
,
A.D.
Sossong
, and
N.T.
Sahin
,
Standing Balance Assessment Using a Head-Mounted Wearable Device
(
Bioengineering
,
2017
).
9.
C.
Seimetz
,
D.
Tan
,
R.
Katayama
,
T.
Lockhart
, and
V.
Tech
,
10
(
2013
).
10.
K.
Soo-Chan
,
K.M.
Joo
,
K.
Nambeom
,
H.J.
Hyun
, and
H.G.
Cheol
,
Journal of Vestibular Research
217
(
2013
).
11.
A.
Syskov
,
V.
Borisov
,
V.
Tetervak
, and
V.
Kublanov
, in
Proceedings of the 11th International Joint Conference on Biomedical Engineering Systems and Technologies
(
SCITEPRESS - Science and Technology Publications, Funchal, Madeira
,
Portugal
,
2018
), pp.
164
172
.
12.
V.
Vasilyev
,
V.
Borisov
,
A.
Syskov
, and
V.
Kublanov
, in
Proceedings of the 12th International Joint Conference on Biomedical Engineering Systems and Technologies
(
SCITEPRESS - Science and Technology Publications
,
Prague, Czech Republic
,
2019
), pp.
532
538
.
13.
C.C.
Yang
and
Y.L.
Hsu
,
Sensors
10
,
7772
(
2010
).
This content is only available via PDF.
You do not currently have access to this content.