Senior Safety Monitoring in Microverse using Fuzzy Neural Network
Enhanced Action Recognition
Abstract
The global aging population poses an urgent challenge in ensuring the
safety and well-being of elderly individuals. With the rapid development
of technologies such as the Internet of Medical Things (IoMT), new
avenues for digital healthcare services (DHS) offer promising solutions
to support elder-care safety. Simultaneously, society stands at the
threshold of a transformative era characterized by the immersive and
interconnected 3D landscape of the Metaverse, reshaping how people live,
work, and socialize. While fully realizing a comprehensive digital
Metaverse landscape remains a vision with various challenges and open
questions, a lightweight metaverse version is within reach. This paper
proposes an innovative Fuzzy Neural Network (FNN) enhanced Image-based
Action Recognition (FIAR) system in Microverse — an edge-scale IoMT
Metaverse designed for DHS. Utilizing adaptive FNNs, FIAR enhances the
adaptability of the multi-sensor fusion process to accommodate varying
input modes and quantities of input sources to reduce decision
uncertainty and learn fuzzy relationships among multiple data streams.
An experimental study confirms the feasibility of the Microverse
framework and FIAR’s capacity to deliver accurate and rapid responses,
validating its effectiveness in safeguarding independently living
elderly individuals.