Wireless Sensor Networks for Healthcare: Comparison
Please note this is a comparison between Version 2 by Lily Guo and Version 1 by Rani Baghezza.

Wireless sensor networks for healthcare refers to the networks that help to monitor the physical conditions. This entry details the Real-Time Centralized Activity Recognition and Real-Time Distributed Activity Recognition

  • activity recognition
  • machine learning
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References

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