Corpus ID: 195458483

Recognition of Smoking Gesture Using Smart Watch Technology

  title={Recognition of Smoking Gesture Using Smart Watch Technology},
  author={Casey A. Cole and Bethany Janos and Dien Anshari and James F. Thrasher and Scott M. Strayer and Homayoun Valafar},
Diseases resulting from prolonged smoking are the most common preventable causes of death in the world today. In this report we investigate the success of utilizing accelerometer sensors in smart watches to identify smoking gestures. Early identification of smoking gestures can help to initiate the appropriate intervention method and prevent relapses in smoking. Our experiments indicate 85%-95% success rates in identification of smoking gesture among other similar gestures using Artificial… Expand
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  • Medicine (Baltimore). 95, e2438
  • 2016