A hierarchical lazy smoking detection algorithm using smartwatch sensors

M. Shoaib, H. Scholten, P. Havinga, Özlem Durmaz Incel
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引用次数: 45

Abstract

Smoking is known to be one of the main causes for premature deaths. A reliable smoking detection method can enable applications for an insight into a user's smoking behaviour and for use in smoking cessation programs. However, it is difficult to accurately detect smoking because it can be performed in various postures or in combination with other activities, it is less-repetitive, and it may be confused with other similar activities, such as drinking and eating. In this paper, we propose to use a two-layer hierarchical smoking detection algorithm (HLSDA) that uses a classifier at the first layer, followed by a lazy context-rule-based correction method that utilizes neighbouring segments to improve the detection. We evaluated our algorithm on a dataset of 45 hours collected over a three month period where 11 participants performed 17 hours (230 cigarettes) of smoking while sitting, standing, walking, and in a group conversation. The rest of 28 hours consists of other similar activities, such as eating, and drinking. We show that our algorithm improves recall as well as precision for smoking compared to a single layer classification approach. For smoking activity, we achieve an F-measure of 90-97% in person-dependent evaluations and 83-94% in person-independent evaluations. In most cases, our algorithm corrects up to 50% of the misclassified smoking segments. Our algorithm also improves the detection of eating and drinking in a similar way. We make our dataset and data logger publicly available for the reproducibility of our work.
一种基于智能手表传感器的分层懒惰吸烟检测算法
众所周知,吸烟是导致过早死亡的主要原因之一。可靠的吸烟检测方法可以使应用程序深入了解用户的吸烟行为,并用于戒烟计划。然而,吸烟很难准确检测,因为它可以以各种姿势进行,也可以与其他活动结合进行,它的重复性较低,并且可能与其他类似的活动(如饮酒和饮食)混淆。在本文中,我们建议使用两层分层吸烟检测算法(HLSDA),该算法在第一层使用分类器,然后使用基于惰性上下文规则的校正方法,该方法利用邻近段来改进检测。我们在三个月的时间里收集了45个小时的数据集来评估我们的算法,其中11名参与者在坐着、站着、走路和小组交谈时吸烟了17个小时(230支烟)。剩下的28小时由其他类似的活动组成,比如吃、喝。我们表明,与单层分类方法相比,我们的算法提高了吸烟的召回率和精度。对于吸烟活动,我们在个人依赖评估中获得90-97%的f值,在个人独立评估中获得83-94%的f值。在大多数情况下,我们的算法纠正了高达50%的错误分类的吸烟部分。我们的算法也以类似的方式改进了对饮食的检测。我们公开了我们的数据集和数据记录器,以保证我们工作的可重复性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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