MRC Integrative Epidemiology Unit (IEU), University of Bristol, Bristol, UK.
School of Experimental Psychology, University of Bristol, Bristol, UK.
Nicotine Tob Res. 2019 Jan 4;21(2):257-261. doi: 10.1093/ntr/nty008.
Recent developments in smoking cessation support systems and interventions have highlighted the requirement for unobtrusive, passive ways to measure smoking behavior. A number of systems have been developed for this that either use bespoke sensing technology, or expensive combinations of wearables and smartphones. Here, we present StopWatch, a system for passive detection of cigarette smoking that runs on a low-cost smartwatch and does not require additional sensing or a connected smartphone.
Our system uses motion data from the accelerometer and gyroscope in an Android smartwatch to detect the signature hand movements of cigarette smoking. It uses machine learning techniques to transform raw motion data into motion features, and in turn into individual drags and instances of smoking. These processes run on the smartwatch, and do not require a smartphone.
We conducted preliminary validations of the system in daily smokers (n = 13) in laboratory and free-living conditions running on an Android LG G-Watch. In free-living conditions, over a 24-h period, the system achieved precision of 86% and recall of 71%.
StopWatch is a system for passive measurement of cigarette smoking that runs entirely on a commercially available Android smartwatch. It requires no smartphone so the cost is low, and needs no bespoke sensing equipment so participant burden is also low. Performance is currently lower than other more expensive and complex systems, though adequate for some applications. Future developments will focus on enhancing performance, validation on a range of smartwatches, and detection of electronic cigarette use.
We present a low-cost, smartwatch-based system for passive detection of cigarette smoking. It uses data from the motion sensors in the watch to identify the signature hand movements of cigarette smoking. The system will provide the detailed measures of individual smoking behavior needed for context-triggered just-in-time smoking cessation support systems, and to enable just-in-time adaptive interventions. More broadly, the system will enable researchers to obtain detailed measures of individual smoking behavior in free-living conditions that are free from the recall errors and reporting biases associated with self-report of smoking.
最近的戒烟支持系统和干预措施的发展突出了需要一种不引人注目的、被动的方式来衡量吸烟行为。为此已经开发了许多系统,这些系统要么使用定制的传感技术,要么使用昂贵的可穿戴设备和智能手机组合。在这里,我们提出了 StopWatch,这是一种用于被动检测吸烟的系统,它运行在低成本的智能手表上,不需要额外的传感或连接的智能手机。
我们的系统使用 Android 智能手表中的加速度计和陀螺仪的运动数据来检测吸烟的标志性手部动作。它使用机器学习技术将原始运动数据转换为运动特征,进而转换为个人拖动和吸烟实例。这些过程在智能手表上运行,不需要智能手机。
我们在实验室和自由生活条件下,在运行 Android LG G-Watch 的情况下,对 13 名日常吸烟者对该系统进行了初步验证。在自由生活条件下,在 24 小时内,系统的精度为 86%,召回率为 71%。
StopWatch 是一种用于被动测量吸烟的系统,完全在市售的 Android 智能手表上运行。它不需要智能手机,因此成本低,也不需要定制的传感设备,因此参与者的负担也低。虽然性能目前低于其他更昂贵和复杂的系统,但对于某些应用来说已经足够了。未来的发展将集中在提高性能、在各种智能手表上进行验证以及检测电子烟的使用。
我们提出了一种低成本的基于智能手表的系统,用于被动检测吸烟。它使用手表中的运动传感器数据来识别吸烟的标志性手部动作。该系统将为基于上下文的及时戒烟支持系统提供个体吸烟行为的详细测量,并实现及时自适应干预。更广泛地说,该系统将使研究人员能够在自由生活条件下获得个体吸烟行为的详细测量,从而避免与自我报告吸烟相关的回忆错误和报告偏差。