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Journal of Medical Systems

, 42:230 | Cite as

Internet of things for knowledge administrations by wearable gadgets

  • Sivakumar Krishnan
  • S. Lokesh
  • M. Ramya Devi
Mobile & Wireless Health
  • 78 Downloads
Part of the following topical collections:
  1. Mobile & Wireless Health

Abstract

The novel gadgets are associated constantly at a quick phase for the development of Internet of Things (IoT). Wearable gadgets are another gathering development in those available gadgets. The recent method in gadgets is to coordinate with IoT and idea is implementing the remote sensor systems that convey novel encounters in day by day exercises. Here, I exhibit a regular day to day existence application including a Wireless Sensor Networks (WSN) for gaming situation. By using this, the physical factors of sports person are estimated and directed by wearable gadgets to Wireless Sensor Networks. The end goal to incorporate diverse equipment stages and to present an administration situated semantic middleware arrangement hooked on a solitary request also utilization of Enterprise Service Bus (ESB) is introduced as a scaffold to ensure coordination of the distinctive conditions and interoperability. Through proposed method everyone can procure information by introducing framework to fresh client. Those clients would be able to get to the information through a wide assortment of gadgets (cell phones, tablets, and PCs) and working frameworks (Android, Windows, Linux, iOS, and so on). Finally we introduced one case study of football match for monitoring 11 players and acquiring data’s and to predict the real time situation in football ground.

Keywords

IoT Wearable devices Wireless sensor networks Health monitoring Enterprise service bus 

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Copyright information

© Springer Science+Business Media, LLC, part of Springer Nature 2018

Authors and Affiliations

  1. 1.Principal - AcademicsRathinam Technical CampusCoimbatoreIndia
  2. 2.Department of Computer Science and EngineeringHindusthan Institute of TechnologyCoimbatoreIndia
  3. 3.Department of Computer Science and EngineeringHindusthan College of Engineering and TechnologyCoimbatoreIndia

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