Development and Implementation of Mobile Apps for Skier
Training System
Kim
Yong Wook and Kim Ju Yong
Department of Sports & Well-Being, HanYang University, Ansan, 15588, Korea
Keywords: Skier Training System, Mobile Apps.
Abstract: Most skiers who use smartphones carry them when they ski. Lately internet connection is getting better and
there can be active information exchanges between applications installed in smartphones and online operating
servers. In addition, with the use of GPS, smart phones can precisely track skier's locations and record the
real time information of the gyroscope sensors connected to the Bluetooth of smart devices. This study aims
to design and develop a mobile application which can monitor ski trails and analyze ski postures with the help
of smartphones technology. For this reason, our mobile application was developed based on Android SDK
4.2 version using Java, and C-language. To measure the information of the skier's posture, a belt with several
gyroscope sensors was developed. It records the postures of the skiers who wear the belt when they move
their body from side to side and back and forth. Through the application's calculations of the skier's speed and
directional turning track data, skiers can know what modifications they need to make in order to improve their
techniques and adjust their postures. This mobile application can exchange information with online operating
servers with the use of 3G and Wi-Fi. In addition, it operates as a background program in smartphones and
starts recording and analyzing when skiers start skiing at designated ski resorts.
1 INTRODUCTION
Since the development of computers and their
practical uses in a daily life, many studies have been
found particularly in the sports training sector. The
computer has been used helpfully in finding the most
effective method to accurately measure and improve
the exercise ability of an elite athlete. As computers
develop, various scientific sports programs are being
developed to measure and record the physical ability
of athletes and manage their conditions. Recently, the
current existing research environments have been
expanded along with the emergence of smartphones.
In the past, a number of sensors were attached to an
athlete’s body, and then the sensors needed to be
connected to a computer by wire in order to measure,
in detail, the exercise records of elite athletes. Such
devices, however, posed some issues, such as
uncomfortable or unnatural movement of athletes,
and network disconnection while recording.
Now smartphones can replace the computer.
Smartphones use a ‘Mobile Communication Network
and are connected to other computers anytime and
everywhere if connected to internet network. In
addition, GPS, gyroscope sensors, acceleration
sensors, illuminance sensors, and other sensors
embedded in smartphones can collect various types of
information (Dobkin and Bruce, 2013). Therefore,
smartphone-based information collecting can be free
from the location limits. Also wired smartphone
connections can be resolved through various sensors
in the Bluetooth wireless module. Along with the
development of various equipment including
smartphones, many developments and studies are on-
going to improve the athletic skills of elite athletes
(Chardonnens and Julien, 2014). The studies
requiring massive human resources and investments
as to improve the athletic skills of an elite athlete are,
of course, important. However, additional studies on
‘Sports Training Apps’ are also needed to boost
simple and convenient uses in ordinary people. The
studies on mobile apps helpful to improve users’
lifestyles are also performed in medical sector as well.
Various apps are developed for the purpose of
treating or adjusting the patients, such as mobile apps
for correcting patient’s incorrect posture or for
inducing an active lifestyle in teenagers (Gefen et al.,
2015; Lubans and David, 2014; Hidalgo-Mazzei et al.,
2015). If users use the above mobile apps well, it
definitely helps to achieve users’ treatment or
adjustment purposes (Recio-Rodríguez et al., 2014;
214
Wook, K. and Yong, K..
Development and Implementation of Mobile Apps for Skier Training System.
In Proceedings of the 3rd International Congress on Sport Sciences Research and Technology Suppor t (icSPORTS 2015), pages 214-221
ISBN: 978-989-758-159-5
Copyright
c
2015 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
Al-Hadithy et al., 2012). Smartphones are considered
a convenient device for users since users can install
and use various mobile apps in their smartphones. In
other words, users can use various mobile apps by
simply downloading apps from the app store and
installing it into their smartphones (Chittaro et al.,
2014).
If users have a strong will for training, ‘Sports
Training APPS’ can achieve their desired training
performance without temporal or location limitations.
Through these apps, users can control their own skill
and check their exercise logs to get a self-feedback.
Usually athletes had to check their training logs
monitored by a third person, but app users can
achieve their skill improvements themselves through
a self-report (self-feedback) (Saw et al., 2015). If
skiers have access to a monitoring tool that enables
them to check their downhill record, it would be
helpful to improve their skiing skills. Therefore, the
purpose of this study is to design mobile apps that are
required for skiers and to explore the applicability and
effectiveness of mobile apps at the ski slope. This
study is to help in designing convenient mobile apps
for skiers who use smartphones. The mobile apps
designed in this study include a monitoring feature for
skier’s exercise logs and postures.
2 RESEARCH APPROACH
The mobile apps in the “Health and Fitness” sector
that are currently available in the app store are in a
ranking order from ‘Providing instruction on how to
perform behavior’, ‘Modeling/ demonstrating
behavior’ to ‘Providing feedback on performance’ (C
onroy et al., 2014). The sector is further classified into
3 broad parts: ‘Health Training Apps’, ‘Exercise
Tracking Apps’ and ‘Motion Tracking Apps’. First,
the key functions of ‘Health Training Apps’ include
the followings. The users themselves exercise with
their own posture as guided by a personal trainer in
the video (7 Minute Workout, 2015; Daily Workout,
2015; Sworkit, 2015). First, the trainees learn about
exercising for their health training. Next, the trainees
determine the exercise type based upon their purpose
of exercise (weight loss, muscular strength, etc.).
Based on the exercise type determined by the trainees,
the exercise program, recommended by their ‘Health
Training Apps’, are then executed. Their exercise
logs are then saved in their smartphones so the users
can investigate their exercise logs at a glance.
However, such exercise programs pose the following
problems. Users exercise without measuring the
individual exercise intensity. Health trainers at fitness
clubs draw an exercise program considering various
variables of their trainees. All items from the
measurement of basic exercise unit, ‘1RM’, intensity
from exercising to muscular training should be
accurately determined. However, ‘Health Training
Apps’ require all users to enter all variables, posing
the possibilities that the incorrect variables may be
entered. This further poses limits of creating an
accurate exercise program suitable to each individual.
This problem associated with the variables that
should be directly entered by users are also found in
mobile apps in other sectors. ‘Health Training Apps’,
which should suggest an exercise prescription
without accurately checking the personal
characteristics of users, pose a limitation to a ‘General
Exercise Prescription’. Despite these limitations, this
program continues to grow and develop to improve
user’s convenience (Parikh et al., 2014). Therefore,
various variables should be considered in developing
‘Health Training Apps’ as well as to avoid from
making an incorrect exercise program.
Second, ‘Exercise Tracking Apps’ are considered
to be nearly complete. Apps are either already
embedded in the smartphones since their release or
additionally sold from App Stores. The similarity of
these apps are that the user’s movements are
measured by a GPS-based location traceability or
gyroscope sensors embedded in smartphones or
smartwatch (endomondo, 2015). If users perform an
outdoor exercise such as running or biking, these apps
enable tracking and recording of the user’s route and
speed very accurately. In addition, the outdoor
environment such as local weather information is
provided to give the users various logs. Also, users
can make up their own exercise routes using the
information shared by other users. People who
actively use these ‘Exercise Tracking Apps’ can
easily post and share their individual exercise logs
and lifestyles on social media.
Third, ‘Motion Tracking Apps’ adjust users’
position when they exercise using some equipment.
These ‘Motion Tracking Apps’ are already vitalized
in the golf sector and are available on the market now
(Nike Golf 360° App, 2015). A device attached on a
golfer’s hat that serves as a guide for the distance
from the hitting point to hole on the golf field is
successfully commercialized these days (Voice
Caddie, 2015). In addition, there are other apps that
analyze the user’s swing posture to instruct the
correct posture while swinging via a device attached
on the golf club (3baysGSA, 2015). Other apps are
being developed and sold in the tennis sector. It
requires a device attached on a tennis racket to
analyze the user’s tennis swing and proposes an
Development and Implementation of Mobile Apps for Skier Training System
215
accurate hitting point (Smart Tennis Sensor, 2015).
These products are operated by attaching a simple
device on the sporting goods that are connected to
smartphones by Bluetooth to trace and record
exercise motions. The major manufacturers of
sporting goods, such as ‘Nike’ and ‘SONY’, are
selling the mobile apps in popular sports such as golf
and tennis for sports maniacs. Once the maniacs are
satisfied with the mobile apps, the customer
satisfaction in the existing business area is also
improved (Budd and Vorley, 2013). The reason why
many major global manufacturers of sporting goods
are selling mobile apps and various accessories is to
maintain consumer’s loyalty on their brand.
Therefore, the market in sports mobile apps is
expected to continuously grow.
Downhill skiing as a sport requires a basic
downhill technique. Most ordinary skiers enjoy going
downhill at ski resorts. Downhill skiing requires
skiers’ technique to safely ski down the slope. In
order to go down the hill safely, the skier should focus
his or her body weight at an accurate center point. The
body angle should be properly tilted toward the inner
turning axis in order for skiers to stably spin at a fast
speed. The body angle should be changed in
proportion to speed and turning radius. The skiers
learn the proper body angles through their experience
with skiing. If skiers could be advised on how to
control their body angle, it would be very helpful for
them to acquire an advanced skill. In this study, the
location of a skier collected via GPS is analyzed to
check the skier’s downhill records. Therefore this
study is to assist in the design of ‘Skier Training Apps’
that propose a proper body angle at a specific location.
The location of a skier is collected via GPS and the
skier’s posture is recorded in the smartphone via
gyroscope sensors. The information recorded in the
smartphone is saved on an operation server in a real-
time manner. In addition, the proper body angle at a
particular location is calculated and recorded by an
operation server at the same time. Skiers can check
their performance logs after skiing. The operation
servers then advise the skiers their best body angle at
each turning posture.
3 PROPOSED METHODOLOGY
FOR DESIGN AND DEVELOP
MOBILE APPS
The purpose of this study is to develop a ‘Skier
Training System’ that collects and analyzes the
skier’s posture information in a real time manner.
These days, the hardware embedded in our
smartphones have been highly developed into the
same level as personal computers. However,
smartphones require and use many resources in order
to perform the basic functions of phone, such as
calling, messaging, etc. Thus, smartphones pose
difficulty in multi-tasking. ‘Skier Training Apps’
designed in this study, collect information and
transfer them onto an operating server as a primary
role. Instead of required calculations being done on
our phones, they are rather calculated on an online
operating server. In other words, the required
calculations such as ‘R.A.A. (Recommend Angle
Adjustment)’ are performed on an operating server.
3.1 Skier Training System Diagram
This study is broadly designed with two subparts: 1)
‘Skier Training Apps’ operated on smartphones; and
2) ‘Operating servers’. The information collected by
smartphones is uploaded onto the operating server in
a real-time manner (Figure 1).
If the information fails to upload due to poor
network connections, it is temporarily saved in the
smartphone and then automatically uploaded later
once the network is back online. In the operating
server, the database system is operated to manage the
user’s information. The identification number and
user ID are both used as the user’s identification
information. When operating the ‘Skier Training
Apps’ in the smartphone, the app continues to operate
in a ‘background process’ and automatically collects
information. This ‘Skier Training App’ automatically
performs its function as soon as the skier arrives at the
ski resort. The ski resort maps that are shared among
the apps, are constantly updated with new
information.
3.2 Development Environment
The operating server system is composed of a
database system and communication system. The
database system is built based on ‘Oracle Database
12c’. The communication system with ‘Skier
Training Apps’ is made using an ‘XML’. The ‘Skier
Training Apps’ are developed using the Android SDK
4.2 version, Java, and C-language. In the smartphones,
the low priority process may be exited without prior
warning in order to ensure the necessary resources to
execute an application program. For this reason, the
users of ‘Skier Training Apps’ have voiced-guided
logs for skiers once they take a lift for skiing. The
users can listen to real time log broadcasts and know
the operation status of their ‘Skier Training Apps’.
icSPORTS 2015 - International Congress on Sport Sciences Research and Technology Support
216
Figure 1: Skier Training System Diagram.
3.3 Information Gathering
‘Skier Training Apps’ that are being used in the skiers
smartphones are connected to two different sensors
which are responsible for collecting downhill ski
records from a skier. One of the sensors, GPS,
collects the data of the skier’s current location. If at
least three or more GPS signals are received, an
accurate location within five meters of the skier can
be collected. The collected GPS information is
combined with the location data from the user’s
‘Mobile Phone Network’ to give a more accurate
location of the skier. The other sensor is a gyroscope
sensor that checks the posture of the skiers. Once the
skier puts on the gyroscope sensor belt and connects
it with his or her smartphone via Bluetooth, the
gyroscopes on the belt will be activated and ready to
Figure 2: Gyroscope Sensors Belt.
use (Figure 2). Once a skier skis downhill, the
position is recorded in a real-time manner via the
gyroscope sensors in the smartphone and then
uploaded to the operating server.
3.4 Mobile Apps Design
‘Skier Training Apps’ are designed to be
automatically executed without requiring a special
operation. ‘Skier Training Apps’ are also designed
intuitively. The skier completes all preparations by
pushing the start button. A skier only needs to check
the operation of the ‘Skier Training App’ once prior
to skiing. Once the ‘Skier Training App’ is activated,
the skier will be accurately voice-guided based on his
or her travel distance and speed.
If the ‘Skier Training App’ is already executed
while the skier is going to the ski resort, it works in
the background of the smartphone’s operation to see
whether the skier gets on a ski-lift or not. Once it has
been confirmed that the skier takes a ski-lift, the
skier’s activity information will be automatically
saved on the operating server (Figure 3). Even though
the skier forgets to turn off the app once he or she
leaves the ski resort, the app will automatically turn
off for the skier’s sake. This function automatically
operates without pressing the ‘stop’ button after
skiing. As soon as a skier leaves the ski resort, the app
stops recording by itself. Skiers can check their ski
logs while resting (Figure 4). The log is recorded and
listed by ‘Season’, ‘Location’, and ‘Date’. Each log
enables users to check their exercise routes, positions,
etc.
Development and Implementation of Mobile Apps for Skier Training System
217
Figure 3: Exercise Recording.
Figure 4: Skier Training Record.
4 FINDINGS AND ANALYSIS
The field tests of the ‘Skier Training App’ was
performed at five different ski resorts in Korea and
three ski resorts in Japan during the 2014 and 2015
season. Five different smartphone types including the
Samsung Galaxy S5 were used in this experiment. A
total of six skiers participated in the test. The level of
GPS signals that were received were different in
every resort. Although the signal strengths (three or
more) that were received from the GPS satellites were
different at every resort, there was no problem with
the accuracy of the skier’s location. The
disconnection points due to weak GPS signals while
skiing were also observed.
At times when the skier skis in an area that is not
found by the GPS satellites, the operating server will
predict and come up with the missing location info by
calculating the last known position with the current
one. Additionally, the location information via GPS
data and ‘Mobile Phone Network’ will be adjusted
and updated on the operating server (Figure 5).
Figure 5: Track Route.
The standard time used in calculations were not based
on GPS time but the operating server’s time
regardless of different time zones. The time that is
shown in the ski log in the same as the user’s
smartphone time. The speed of a skier was calculated
icSPORTS 2015 - International Congress on Sport Sciences Research and Technology Support
218
by 3-D coordinates through the skier’s latitude,
longitude, and altitude (Figure 6). The irregularity of
travel route was not considered.
Figure 6: Three-Dimensional Calculation Formula.
However, more than a ten meter deviation was
found in the attitude information received by the GPS;
so a ‘Google Elevation API’ was used to adjust the
GPS altitude. A skier’s speed was calculated
considering a 10-second long skier’s distance as the
basic unit. The skier’s speed was recorded every 0.5
seconds and the recorded speed 60 different
linearized measurements. Incorrect speed records on
the linear graph were adjusted and removed.
Posture information collected via the gyroscope
sensors were measured and calculated more precisely
than speed. Once changes in the skier’s posture were
detected by the gyroscope sensors, the sensor
information collected at every 0.1 second. The
information collected 50 linearized postures so the
skier’s posture change data was more accurately
calculated and recorded (Figure 7).
Figure 7: Linear Graph of Speed.
Skiers rarely check their smartphones while going
downhill so real-time R.A.A. (Recommended Angle
Adjustments) were not calculated. The R.A.A. is
calculated as soon as the skier uploads his or her
location and posture data onto the operating server.
The users can receive their feedback when they check
their records while resting after skiing (Figure 8). The
R.A.A. was calculated based on the body angle
proposed in the ‘Downhill Posture Research of
Alpine Skiers’ (Lee et al., 2013; Scheiber et al., 2012).
Other than the recommended body angle of the
‘Downhill Posture Research of Alpine Skiers’, our
test skier’s body angle was also calculated
considering the skier's speed and directional turning
track data.
5 CONCLUSION
Even though skiers are eager to develop their ski
skills, not many of them improve their skills in the
master level training course. By using ‘Skier Training
Apps’ developed in this study, among other things,
skiers will be able to check their downhill trajectory.
The skiers are also able to check their downhill
position at a particular location. The body angle of a
skier changes based upon the skier’s speed and
turning radius when turning while skiing downhill.
Then the information collected is analyzed to
recommend a skier the best body angle for
improvement. Therefore, the skier makes an effort to
improve his or her downhill skiing position compared
to the recommended body angle. This is a mobile app
that enables skiers to check and adjust their posture,
definitely helps skiers to improve their skiing
techniques. In addition, the skiers can check their ski
log data such as duration, distance, burnt calories, etc.
This information helps skiers to establish their own
exercise plan during the winter season. Therefore,
‘Skier Training Apps’ developed through this study
produced the following results.
Figure 8: Recommend Angle Adjustment.
First, skiers can check their own ski log. The
location collected via GPS is analyzed to record
skier’s travel route. Next, detailed information such
Development and Implementation of Mobile Apps for Skier Training System
219
as longitude, latitude, and altitude are calculated for a
skier’s particular location to give a recommended
‘Average Speed’, ‘Maximum Speed’, ‘Turning
Radius’, etc. The personal information previously
entered, such as skier’s weight, height, age, etc., can
estimate the calorie consumption. The above
information is gathered so the skiers can set up their
own exercise plan.
Second, skiers can adjust and improve their posture.
The most important things for downhill skiing
postures are ‘Joint Angles’ and ‘Body Angles’. The
‘Body Angle’ is measured in this study. The
information recorded from ‘Mogul Ski’ and ‘Slalom’
sports that require instant quick movements of pros,
is not consistent with this study. This study has
analyzed the ‘Middle Turn’ and ‘Long Turn’ done by
ordinary skiers while predicting their downhill
postures. The body angle is served as a very crucial
factor for downhill postures. ‘Skier Training Apps’
developed in this study analyzed the skier’s ski
information (speed, turning radius) to recommend the
proper body angle. However, the R.A.A proposed in
this study is resulted from a simple mechanical
calculation without considering the skier’s height,
weight, and age. The R.A.A. is provided as reference
information for the skier, which is not an essential
thing that the skier must follow.
Third, the ‘Exercise Management Program’ was
first used by elite athletes and then ordinary skiers.
All people who enjoy sports desire to improve their
sports technique. Elite athletes are systematically and
scientifically managed by a training system of a
professional coach for their athletic abilities and
performance. This kind of management and coaching
helps to improve their athletic abilities. Ordinary
skiers can also use ‘Exercise Management Program’
mobile apps to manage their skill.
Smartphone app technology information has been
developed from the user’s view, analyzed, and
applied. For example, mobile apps that enable dieters
to check their food consumption and calories via
voice instruction has already been developed (Sun et
al., 2015). In addition, smart mini-screens attached
inside of skier’s goggles to provide skier’s
information such as their skiing time, distance,
altitude, etc. is already available on the market (Zeal
Optics, 2015). Applying this technology proposes
additional studies shown in the following.
A combination of a camera that can be installed on
a skier’s goggles to analyze the downhill route and a
sensor attached to the skier’s legs to measure and
record joint angle information can produce data that
can give audio suggestions for the skier while skiing.
In addition, if there are foot pressure sensors that are
attached in the skier’s boots, the most precise and
stable posture can be proposed to the skier. It can be
integrated with wearable devices, such as chest sensor
belts, which are already available on the market, that
can measure heart rates (Banos et al., 2014). As
mentioned above, various types of physical
information of skier’s can be collected. Therefore, the
best exercise program can be recommended using
data collected for comprehensive calculation.
More studies are required on the development of
various sensors to collect skier’s exercise data, as well
as how to process the collected information. All
studies should be conducted by user interface from
user’s view for easy and simple uses and they also
should be designed based on the strategy applicable
to the sales market (Boudreaux et al., 2014). Most of
the current available mobile apps enable the users to
record their own exercise and give self-feedback to
themselves (Middelweerd et al., 2014). If the users
check their training contents and make an effort to
improve their skill, the mobile app definitely helps
them to improve it (Cranwell et al., 2014; Glynn and
Liam, 2013; Direito et al., 2015). If skiers properly
use the information proposed in this study, their
techniques and exercise skills are sure to improve.
ACKNOWLEDGEMENTS
We would like to thank the anonymous reviewers for
their helpful comments on an earlier version of this
paper.
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