involved, investigate what is the suitable number of
sensors that can accommodate with a single gateway
in establishing secure connectivity and in data
transmission and reception, how to optimize data
traffic and process, overall system communication
performance, more involved activity movement
recognition with the use of machine and deep
learning. Also, how the system can be personalised
and adaptive to a particular subject automatically.
Figure 13: Data presentation of maximum amplitude,
corresponding frequency of the maximum amplitude,
activity recognition ID and activity monitoring track.
4 CONCLUSIONS
This paper proposed a generic IoT test-bed
architectural design for human movement activity
monitoring. The design is driven towards modular
structure that allow both hardware and software
modules to be tested and can be applied to wide range
of healthcare applications. The paper implemented
the proposed testbed functionality pragmatically by
considering post-operative hip fracture rehabilitation
activity movement recognition as one of the use case.
Experimental results represent that the system was
able to implement the testbed functionalities across
all layers and also in recognising most of the
activities. Further involvement will look into testing
the performance measures on activity classification
recognition accuracy, users acceptability and
usability of the proposed device. It will also look into
the compliance of the system with IIOT or Industry
4.0 direction and ability for software defined
infrastructure.
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