RisQ:通过腕带上的惯性传感器识别吸烟手势

Abhinav Parate, Meng-Chieh Chiu, Chaniel Chadowitz, Deepak Ganesan, E. Kalogerakis
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引用次数: 279

摘要

众所周知,在美国,吸烟引起的疾病是导致死亡的主要原因。在这项工作中,我们设计了RisQ,这是一种移动解决方案,利用包含9轴惯性测量单元的腕带来捕捉人的手臂方向的变化,以及处理这些数据以实时准确检测吸烟手势和会话的机器学习管道。我们的主要创新有四个方面:A)一种基于手臂轨迹的方法,提取候选的手对嘴手势;b)一组基于轨迹的特征,将吸烟手势与混杂的手势(包括吃和喝)区分开来;c)一个概率模型,分析手对嘴手势的序列,并推断哪些手势是个人吸烟过程的一部分;以及d)利用放置在人体上的多个imu以及人的手臂的3D动画来减轻标记数据收集的自我报告负担的方法。实验表明,我们的手势识别算法能够以较高的准确率(95.7%)、精确度(91%)和召回率(81%)检测吸烟手势。我们还报告了一项用户研究,该研究表明,我们可以准确地检测一天中吸烟的次数,并且很少有误报,而且我们可以可靠地提取吸烟时段的开始和结束。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RisQ: recognizing smoking gestures with inertial sensors on a wristband
Smoking-induced diseases are known to be the leading cause of death in the United States. In this work, we design RisQ, a mobile solution that leverages a wristband containing a 9-axis inertial measurement unit to capture changes in the orientation of a person's arm, and a machine learning pipeline that processes this data to accurately detect smoking gestures and sessions in real-time. Our key innovations are four-fold: a) an arm trajectory-based method that extracts candidate hand-to-mouth gestures, b) a set of trajectory-based features to distinguish smoking gestures from confounding gestures including eating and drinking, c) a probabilistic model that analyzes sequences of hand-to-mouth gestures and infers which gestures are part of individual smoking sessions, and d) a method that leverages multiple IMUs placed on a person's body together with 3D animation of a person's arm to reduce burden of self-reports for labeled data collection. Our experiments show that our gesture recognition algorithm can detect smoking gestures with high accuracy (95.7%), precision (91%) and recall (81%). We also report a user study that demonstrates that we can accurately detect the number of smoking sessions with very few false positives over the period of a day, and that we can reliably extract the beginning and end of smoking session periods.
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