Publication: SURAKSHA e-Caretaker: Elders Falling Detection and Alerting System using Machine Learning
Type:
Article
Date
2020-12-10
Journal Title
Journal ISSN
Volume Title
Publisher
2020 2nd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
People become unable to perform tasks that were
done at the younger ages as they were when the ages pass with
time. Falls play a major issue in the lives of elderly people as the
physical and mental quality of life is dependable on the effects
of falls. This research presents an e-Caretaker SURAKSHA
which is an elder falling detection and alerting system based on
Machine Learning concepts. Researchers that have been done in
this area have produced different solutions to detect only the
falls but not to automatically detect and notify them to the
caretakers. This solution serves as a smart wearable device that
is capable of automatically monitoring real-time postures,
detecting sudden falls, possible arrhythmia conditions of the
heart of the fallen person, and daily route deviations along with
the fallen location which is finally notified to the caretakers
through a mobile application. According to the performed
studies, python model development was used to implement the
system through Machine Learning concepts by referring to the
Markov model, Prophet model, and Naïve Bayes algorithms.
This solution provides the results of this research with an
accuracy of around 89.9% leading to a successful product in the
domain.
Keywords—
Description
Keywords
Falling Detection, Current Postures, Geo fence, Wearable device, mobile application, Machine Learning
