Publication: Gesture driven smart home solution for bedridden people
Type:
Article
Date
2020-09-21
Journal Title
Journal ISSN
Volume Title
Publisher
Association for Computing Machinery
Abstract
Conversion of ordinary houses into smart homes has been a rising
trend for past years. Smart house development is based on the
enhancement of the quality of the daily activities of normal
people. But many smart homes have not been designed in a way
that is user friendly for differently-abled people such as immobile,
bedridden (disabled people with at least one hand movable). Due
to negligence and forgetfulness, there are cases where the
electrical devices are left switched on, regardless of any necessity.
It is one of the most occurred examples of domestic energy
wastage. To overcome those challenges, this research represents
the improved smart home design: MobiGO that uses cameras to
capture gestures, smart sockets to deliver gesture-driven outputs
to home appliances, etc. The camera captures the gestures done by
the user and the system processes those images through advanced
gesture recognition and image processing technologies. The
commands relevant to the gesture are sent to the specific
appliance through a specific IoT device attached to them. The
basic literature survey content, which contains technical words, is
analyzed using Deep Learning, Convolutional Neural Network
(CNN), Image Processing, Gesture recognition, smart homes, IoT.
Finally, the authors conclude that the MobiGO solution proposes a
smart home system that is safer and easier for people with
disabilities
Description
Keywords
Deep Learning, Computer Vision, Gesture, Smart Appliances, Internet of Things
