Validity and Reliability of the 3D Motion Analyzer in Comparison
with the Vicon Device for Biomechanical Pedalling Analysis
Anthony Bouillod
1,2,3
, Antony Costes
4
, Georges Soto-Romero
3,5
, Emmanuel Brunet
2
and Frederic Grappe
1,6
1
EA4660, C3S Health - Sport Department, Sports University, Besancon, France
2
French Cycling Federation, Saint Quentin en Yvelines, France
3
LAAS-CNRS, Université de Toulouse, CNRS, Toulouse, France
4
Université de Toulouse, UPS, PRISSMH, Toulouse, France
5
ISIFC - Génie Biomédical, 23 Rue Alain Savary, Besançon, France
6
Professional Cycling Team FDJ, Moussy le Vieux, France
Keywords: Bike Fitting, 3D Kinematics, Comparison, Laboratory, Cycling.
Abstract: The present work aimed to assess the validity and reliability of the 3D motion analyzer (Shimano Dynamics
Lab, Sittard, Netherland) during laboratory cycling tests in comparison with the Vicon device (Vicon
Motion Systems Ltd. Oxford, UK). Three cyclists were required to complete one laboratory cycling test at
three different pedalling cadence and at a constant power output. Kinematic measurements were collected
simultaneously from 3D motion analyzer and Vicon devices and performed five times for each pedalling
cadence. The two systems showed a high reliability with excellent intraclass correlation coefficients for
most kinematic variables. Moreover, this system was considered as valid by considering the error due to the
initial markers placement. Experts and scientists should use the Vicon system for the purpose of research
whereas the 3D motion analyzer could be used for bike fitting.
1 INTRODUCTION
Bike fitting is an important process to adjust the
geometry of the bike and its components to the
needs of the cyclist. Optimal position on the bicycle
may be considered as a position in which force
application and comfort are maximised, whilst
resistive forces and risk of injury are minimised, in
order to maximise bicycle velocity (Iriberri et al.,
2008). The manipulation of a single variable such as
saddle height can improve performance within
cycling economy (Peveler and Green, 2010) and
power output in anaerobic exercises (Peveler et al.,
2007).
Numerous methodologies and systems have
been proposed to perform bike fitting (Holmes et al.,
1994, Iriberri et al., 2008, Nordeen-Snyder, 1977).
However, different kinematic systems do not
necessary provide the same results (Fonda et al.,
2014). Umberger and Martin (Umberger and Martin,
2001) reported that no significant difference exist
between 3D and 2D kinematic systems whereas
Fonda et al. (Fonda et al., 2014) measured
significant differences between the two systems. The
3D motion analyzer (Shimano Dynamics Lab,
Sittard, Netherland) is a new kinematic system
positioned in the sagittal plane and tracking LED
markers attached to the skin.
This study aimed to assess the validity and
reliability of the 3D motion analyzer in comparison
with the Vicon device for biomechanical pedalling
analysis. We hypothesized that 1) the kinematic
variables measured by the two systems would be
similar and 2) the two systems will achieve an
excellent reliability.
2 METHODS
Three cyclists volunteered to participate in the study.
Prior to testing and after having received a full
explanation of the nature and purpose of the study,
the participants gave their written informed
consents. The participants performed one testing
session with the same road-racing bicycle (Lapierre
Pulsium, Dijon, France). The validity and reliability
Bouillod, A., Costes, A., Soto-Romero, G., Brunet, E. and Grappe, F.
Validity and Reliability of the 3D Motion Analyzer in Comparison with the Vicon Device for Biomechanical Pedalling Analysis.
DOI: 10.5220/0006088200630066
In Proceedings of the 4th International Congress on Sport Sciences Research and Technology Support (icSPORTS 2016), pages 63-66
ISBN: 978-989-758-205-9
Copyright
c
2016 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
63
of the 3D motion analyzer was investigated on an
Elite Novo Force home-trainer (Elite, Fontaniva,
Italy) (figure 1) at three different pedalling cadences
(60, 90 and 120 rpm) and at a constant power output
(200 W) measured by a SRM power meter (SRM,
Schoberer Rad Messtechnich, Julich, Germany).
Kinematic measurements were performed five times
for each pedalling cadence resulting in 15 different
data sets by participant, each data set lasting 10
seconds.
Kinematic analysis of the cyclists’ right side
was performed assuming symmetry of motion
between left and right sides (Heil et al., 1997,
Garcia-Lopez et al., 2015) and using the 3D motion
analyzer. Height LED markers with built-in probe
were attached to the skin of the cyclists (fifth
metatarsal head, calcaneus, lateral malleolus, lateral
femoral epicondyle, greater trochanter, acromion,
lateral epicondyle of the humerus and styloid
process of the ulna) (Bini et al., 2010a, Ferrer-Roca
et al., 2012). The 3D sensor was positioned 2 m
away from the sagittal plane and was calibrated
before the study as recommended by the
manufacturer. Automatic tracking, processing and
analysing data were performed by a specific
software (Bikefitting.com, Version 2.1.5, Shimano
Dynamics Lab, Sittard, Netherland).
Kinematic data were also collected from 12
passive markers recorded by twelve infrared
cameras (Vicon Motion Systems Ltd. Oxford, UK).
These markers were attached in the same line,
interspersed within active ones (LED markers). The
Vicon system (using Nexus 1.7.1 software) is a
marker-based motion capture system acknowledged
as a reference. This motion capture system carries 12
MX3+ cameras with a frequency of 200 Hz, a
millimeter accuracy and a resolution of 659 × 494
pixels each. The data processing was performed
using custom-made code written in Matlab software
(Matlab Release 2014a, The MathWorks, Inc.,
Natick, Massachusetts, USA).
Shoulder, forearm, elbow, torso, hip, knee,
ankle and foot (vertical and lateral) angles were
determined. Angular position values of the hip, knee
and ankle were expressed as flexion (minimum
angle) and extension (maximum angle). Knee lateral
travel and knee travel tilt were also measured during
the study.
3 RESULTS AND DISCUSSION
The two devices showed a high reliability with no
significant difference and excellent intraclass
correlation coefficients (Cicchetti, 1994) for most
kinematic variables (table 1). This results confirmed
our hypothesis showing that the two systems
achieved a high reliability.
Table 1: Intraclass correlation coefficients (ICC) for the
two systems and for all kinematic variables.
Variable
ICC
Vicon
Motion
Analyzer
Shoulder angle (°) 0.90 0.93
Forearm angle (°) 0.35 0.63
Elbow angle (°) 0.74 0.59
Torso angle (°) 0.79 0.95
Hip angle extension (°) 0.86 0.63
Hip angle flexion (°) 0.94 0.97
Knee angle extension (°) 0.96 0.98
Knee angle flexion (°) 0.88 0.97
Knee lateral travel (mm) 0.84 0.88
Knee travel tilt (°) 0.99 0.92
Foot vertical angle (°) 0.89 0.66
Foot lateral angle (°) 0.97 0.94
Ankle angle maximum (°) 0.97 0.92
Ankle angle minimum (°) 0.84 0.89
Ankle range (°) 0.85 0.72
Figure 1: settings for the experiment.
All kinematic variables collected with the 3D
motion analyzer were significantly correlated with
those collected with the Vicon device (table 2)
except for knee angle flexion and foot lateral angle.
However, some statistical differences have been
reported suggesting that the 3D motion analyzer
measurements were significantly different that those
measured with the Vicon system. The present study
icSPORTS 2016 - 4th International Congress on Sport Sciences Research and Technology Support
64
Table 2: Comparative statistics of kinematic variables (n = 3) measured during the session between the Vicon system and
the 3D motion analyzer system for all pedalling cadences. Values are reported as mean ± SD.
Variable Vicon
Motion
Analyzer
Statistical
difference
Linear
regression
(R
2
)
Bias 95% CI- 95% CI+
Shoulder angle (°) 77.7 ± 4.5 74.9 ± 4.0 ** 0.96** -2.8 -4.7 -0.9
Forearm angle (°) 41.3 ± 2.1 39.7 ± 2.7 ** 0.55** -1.6 -5.1 1.9
Elbow angle (°) 158.4 ± 4.8 157.2 ± 3.4 * 0.66** -1.2 -6.9 4.4
Torso angle (°) 45.5 ± 2.5 45.2 ± 3.3 n.s. 0.86** -0.3 -3.0 2.4
Hip angle extension (°) 105.7 ± 4.7 104.6 ± 3.8 ** 0.70** -1.0 -6.1 4.0
Hip angle flexion (°) 59.1 ± 3.4 62.3 ± 1.2 n.s. 0.18* 3.2 -3.0 9.3
Knee angle extension (°) 40.2 ± 2.6 46.6 ± 5.0 ** 0.76** 6.3 0.5 12.2
Knee angle flexion (°) 119.5 ± 2.1 114.7 ± 3.3 ** 0.01 -4.8 -12.4 2.8
Knee lateral travel (mm) 18.3 ± 6.5 22.2 ± 9.2 ** 0.66** 3.9 -6.7 14.5
Knee travel tilt (°) 3.8 ± 1.9 3.6 ± 2.5 n.s. 0.23** -0.2 -7.8 7.3
Foot vertical angle (°) 26.6 ± 2.1 25.9 ± 2.9 * 0.39** -0.7 -5.1 3.7
Foot lateral angle (°) 5.7 ± 1.8 8.3 ± 2.0 ** 0.05 2.6 -2.0 7.2
Ankle angle maximum
(°)
101.5 ± 6.3 99.3 ± 5.7 ** 0.92** -2.1 -5.7 1.4
Ankle angle minimum (°) 75.4 ± 3.5 75.6 ± 4.0 n.s. 0.87** 0.2 -2.6 3.0
Ankle range (°) 26.0 ± 4.2 23.6 ± 3.6 ** 0.92** -2.4 -4.9 0.1
* Significant at p < 0.05; ** Significant at p < 0.001; 95% CI = 95% Confidence Interval.
confirmed that various motion capturing systems do
not necessarily provide the same results as they
work on different basis (Fonda et al., 2014). This is
of practical importance when adjusting body
position. Even though most of the kinematic
variables were significantly different, these
differences are often less than 3°.
These results underlined the importance of the
markers placement for comparative and statistical
analysis between the two systems. Considering the
error due to the initial markers placement (obtained
for each cyclist) as an offset, we could compensate
the significant difference obtained for knee angle
extension (6.3°). To a lesser extent, the differences
measured between the two systems could be
influenced by some movements of the 3D motion
analyzer markers (altering the alignment with the
Vicon markers) during dynamic measurements. Our
results indicated that with a cycling specific motion
analysis tool and easy post-processing analysis, we
are able to obtain reliable and useful data for bike
fitting, in comparison with a full 3D motion capture
system.
There was a significant increase in knee
extension (from 38.4 to 42.3°) and knee flexion
(from 118.5 to 120.6°) mean angles with increasing
pedalling cadence only with the Vicon device.
Additionally, foot vertical and ankle range mean
angles were significantly increased with pedalling
cadence for both the 3D motion analyzer and the
Vicon system. Divergence among studies has been
observed regarding the contribution of each joint
(Hoshikawa et al., 2007, Mornieux et al., 2007, Bini
et al., 2010b). The current study indicated that knee
joint changed with increasing pedalling cadence
whereas several authors (Bini et al., 2010b, Ericson,
1988) have reported no change. However, ankle
range increased when pedalling cadence was
increased from 60 to 120 rpm. This result is in
accordance with previous studies (Ericson, 1988,
Hoshikawa et al., 2007, Mornieux et al., 2007, Bini
et al., 2010b) suggesting that ankle joint muscles
control the pedal force application.
Note that this study is limited to only three
participants and is therefore considered as
preliminary. Nevertheless, the study design
provided a large number of measurement over a
variety of pedalling cadences typically generated by
elite athletes.
Validity and Reliability of the 3D Motion Analyzer in Comparison with the Vicon Device for Biomechanical Pedalling Analysis
65
4 CONCLUSIONS
The 3D motion analyzer showed a high reliability.
Moreover, this system was considered as valid after
compensation of the operator dependent error due to
the initial markers alignment between the two
systems.
Experts and scientists should use the Vicon
system for the purpose of research whereas the 3D
motion analyzer could be used for bike fitting. Bike
fitting experts could employ a correction factor for
each kinematic variables using the constant bias
measured in our study. Additionally, these experts
must standardize the pedalling cadence during bike
fitting sessions considering that the contribution of
the ankle joint was influenced by the pedalling
cadence.
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