Thakur Saurabh Singh, Poddar Pradeep, Roy Ram Babu
Rajendra Mishra School of Engineering Entrepreneurship, Indian Institute of Technology, Kharagpur, India.
Department of Metallurgical and Materials Engineering, Indian Institute of Technology Kharagpur, Kharagpur, India.
Multimed Tools Appl. 2022;81(10):14529-14551. doi: 10.1007/s11042-022-12349-6. Epub 2022 Feb 25.
Smoking cessation efforts can be greatly influenced by providing just-in-time intervention to individuals who are trying to quit smoking. Detecting smoking activity accurately among the confounding activities of daily living (ADLs) being monitored by the wearable device is a challenging and intriguing research problem. This study aims to develop a machine learning based modeling framework to identify the smoking activity among the confounding ADLs in real-time using the streaming data from the wrist-wearable IMU (6-axis inertial measurement unit) sensor. A low-cost wrist-wearable device has been designed and developed to collect raw sensor data from subjects for the activities. A sliding window mechanism has been used to process the streaming raw sensor data and extract several time-domain, frequency-domain, and descriptive features. Hyperparameter tuning and feature selection have been done to identify best hyperparameters and features respectively. Subsequently, multi-class classification models are developed and validated using in-sample and out-of-sample testing. The developed models obtained predictive accuracy (area under receiver operating curve) up to 98.7% for predicting the smoking activity. The findings of this study will lead to a novel application of wearable devices to accurately detect smoking activity in real-time. It will further help the healthcare professionals in monitoring their patients who are smokers by providing just-in-time intervention to help them quit smoking. The application of this framework can be extended to more preventive healthcare use-cases and detection of other activities of interest.
The online version contains supplementary material available at 10.1007/s11042-022-12349-6.
对试图戒烟的个人提供即时干预,可极大地影响戒烟努力。在可穿戴设备监测的日常生活混杂活动(ADL)中准确检测吸烟活动,是一个具有挑战性且引人入胜的研究问题。本研究旨在开发一个基于机器学习的建模框架,利用来自腕部可穿戴惯性测量单元(IMU,6轴)传感器的流数据,实时识别混杂ADL中的吸烟活动。已设计并开发了一种低成本腕部可穿戴设备,用于收集受试者进行这些活动时的原始传感器数据。采用滑动窗口机制处理流原始传感器数据,并提取多个时域、频域和描述性特征。分别进行了超参数调整和特征选择,以确定最佳超参数和特征。随后,使用样本内和样本外测试开发并验证了多类分类模型。所开发的模型在预测吸烟活动时获得了高达98.7%的预测准确率(受试者工作特征曲线下面积)。本研究结果将导致可穿戴设备的一种新应用,即实时准确检测吸烟活动。这将进一步帮助医疗保健专业人员通过提供即时干预来帮助吸烟者戒烟,从而监测他们的吸烟患者。该框架的应用可扩展到更多预防性医疗用例以及其他感兴趣活动的检测。
在线版本包含可在10.1007/s11042-022-12349-6获取的补充材料。