论文标题
使用智能手表技术识别吸烟手势
Recognition of Smoking Gesture Using Smart Watch Technology
论文作者
论文摘要
长期吸烟引起的疾病是当今世界上最常见的可预防死亡原因。在本报告中,我们研究了在智能手表中使用加速度计传感器来识别吸烟手势的成功。早期识别吸烟手势可以帮助启动适当的干预方法并防止吸烟中复发。我们的实验表明,使用人工神经网络(ANN),在其他类似手势之间识别吸烟手势的成功率为85%-95%。我们的调查得出的结论是,从加速度计的X维度获得的信息是识别吸烟手势的最佳方法,而Y和Z的尺寸有助于消除其他手势,例如:进食,饮用和鼻子刮擦。在ANN训练期间,我们利用了Apple Watch的传感器数据。使用从卵石钢收集的另一个参与者的传感器数据,当使用对先前从Apple Watch收集的数据进行培训的ANN时,我们获得了90%的吸烟识别精度。最后,我们已经证明了使用智能手表进行日常活动的连续监控的可能性。
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 Neural Networks (ANNs). Our investigations concluded that information obtained from the x-dimension of accelerometers is the best means of identifying the smoking gesture, while y and z dimensions are helpful in eliminating other gestures such as: eating, drinking, and scratch of nose. We utilized sensor data from the Apple Watch during the training of the ANN. Using sensor data from another participant collected on Pebble Steel, we obtained a smoking identification accuracy of greater than 90% when using an ANN trained on data previously collected from the Apple Watch. Finally, we have demonstrated the possibility of using smart watches to perform continuous monitoring of daily activities.