Smart Embedded Medical Diagnosis using Beaglebone Black and Arduino
Journal Title: INTERNATIONAL JOURNAL OF ENGINEERING TRENDS AND TECHNOLOGY - Year 2014, Vol 8, Issue 1
Abstract
Now a day’s healthcare industry is to provide better healthcare to people anytime and anywhere in the world in a more economic and patient friendly manner. The Medical Diagnosis Shield allows Arduino and Beaglebone Black users to perform biometric and medical applications where body monitoring is needed by using 9 different sensors. This information can be used to monitor in real time the state of a patient or to get sensitive data in order to be subsequently analysed for medical diagnosis. Biometric information gathered can be wirelessly sent using any of the 6 connectivity options available: Bluetooth, 802.15.4, ZigBee, WI-Fi, 3G and GPRS depending on the application.
Authors and Affiliations
Ch Srikanth , D S Pradeep M , Sreeram Charan K
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