IoT BASED ECG MONITORING SYSTEM (IoT Health)
Author’s Name : S Krishna Veni | M Thirumagal
Volume 05 Issue 01 Year 2018 ISSN No: 2349-2503 Page no: 17-20
Abstract:
Smart and cost effective healthcare has been in increasing demand to meet the needs of growing human population and medical expenses. ECG monitoring is a widely studied and applied approach to diagnose heart diseases. However, existing portable wireless ECG monitoring systems cannot work without a mobile application, which is responsible for data collection and passing on the messages to doctors. In this project, we propose a new method for ECG monitoring based on Cypress Wireless Internet Connectivity for Embedded Devices (WICED) Internet of Things (IoT) platform
Keywords:
Electro Cardio Gram (ECG), Internet of Things( IOT), Electro Encephalo Gram (EMG), WIFI, Bluetooth, Zigbee
Communication
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