major importance is home based motion sensing 
specially for the elderly people. Wearable sensors 
can be used to monitor patients at home and track 
their movements (OQuigley et al., 2014). 
Researchers have discussed E-textile devices for 
data collecting to support work on Parkinson’s 
disease. Parkinson Disease (PD) is a 
neurodegenerative motor disorder that targets and 
breaks down the nervous system. It occurs more 
frequently with the elderly people. Affected 
individuals can become unable to perform fine 
motor movements of hands and arms.  Collecting 
objective movement data from a device such as a 
smart textile can help in accurately monitoring the 
patient state (Plant et al., 2014). Also, patients with 
post-strokes can suffer from hand disabilities and 
would benefit from Smart Gloves during 
rehabilitation (Hidayat et al., 2015). Several smart 
clothes were developed for tracking the activities of 
users by using textile-based sensors for monitoring 
deformation along textile, positions, angles, and 
accelerations of body segments or joints during 
motion (Goncu-Berk et al., 2017). In (Jung et al., 
2017), the researchers developed the RAPAEL smart 
glove by involving video games to help patients in 
their rehabilitation process at home.  Various 
sensitized gloves have been discussed in the 
literature, for example, gloves that track hand and 
finger motion for providing feedback to 
rehabilitation systems (Escoto et al., 2017). For a 
review of wearable sensors, the reader is directed to 
read the survey by Duarte Dias in (Dias et al., 2018). 
In this paper, we propose a novel Smart Glove 
design that provides accurate readings and send 
relevant information to doctors especially 
physiotherapists enabling them to monitor patients 
and provide them with the most suitable 
prescriptions. The Smart Glove has several 
therapeutic functions. One of these functions is to   
provide doctors with flex related measurements 
through simple smart phone applications. An 
additional novel feature that is added is the ability to 
measure hand gripping capabilities of patients by 
holding house hold objects like a tea cup for 
instance, while the patient is holding a cup of tea, 
the therapist can monitor remotely the rehabilitation 
process of the patient by looking at the data sent 
from the gripper sensors through the smart glove. 
The proposed smart glove can be used for several 
other purposes as will be discussed in the next 
sections. It is worth noting that the proposed system 
has been implemented using off-the-shelf components 
which were combined with our algorithms for data 
analysis and information transmission. 
2  METHODOLOGY 
This work focuses on the development of a Smart 
Glove system for helping the elderly people at home 
suffering from joints movement disability. The main 
objective is to design, implement and test a device 
for remotely monitoring hand and fingers 
movements. The system uses Smart Glove and a 
multitude of E-textile sensors to measure the range 
of motion (ROM) of fingers, and a microcontroller. 
This system can collect and send rehabilitation 
related data to physiotherapists. The microcontroller 
allows the control of the activity of the Smart Glove 
in an easy and effective way. The Smart Glove is 
connected to a Bluetooth Module for observing the 
state of patient`s palm and alerting the 
physiotherapist if an error or an abnormality has 
occurred. The main advantage of the proposed 
solution is its simplicity, cost-efficiency, and 
scalability with home based IOT systems. The whole 
proposed system costed less than 100$ to build and 
has low power requirements, compared to the 
commercial Rapael Smart glove for arthritis Rehab, 
which has a rental cost of 99$/month, and a total 
cost for hospital amounting to 15,000$. 
Nevertheless, the proposed smart glove is only 
intended to be worn while collecting measurements. 
Additional research is needed to make the system 
more user friendly and non-invasive, in addition to 
collecting patient’s data in a clinical setting with the 
aid of a physiotherapist. 
 
Figure1: System Design. 
We display in Fig1 the overall proposed system. The 
Smart Glove comprises two flex sensors and one 
force sensor. Finger motion is measured by a flex 
sensor while the force sensor measures the applied 
pressure on each finger and transfers all these data to 
the microcontroller.  The Arduino Lilypad processes 
the data and sends them to a physiotherapist by 
using a Bluetooth module. In this research, we use 
LilyPad Arduino, which is designed for E-textiles 
and wearables e-health applications. It can be sewn 
to fabric and similarly mounted power supplies, 
sensors and actuators with conductive thread. Two 
E-textile force sensors and one E-textile flex sensor 
were used only due to the limited I/O ports on the