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Context Mining of Sedentary Behaviour for Promoting Self-Awareness Using a Smartphone

机译:久坐行为的上下文挖掘以使用智能手机提升自我意识

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摘要

Sedentary behaviour is increasing due to societal changes and is related to prolonged periods of sitting. There is sufficient evidence proving that sedentary behaviour has a negative impact on people’s health and wellness. This paper presents our research findings on how to mine the temporal contexts of sedentary behaviour by utilizing the on-board sensors of a smartphone. We use the accelerometer sensor of the smartphone to recognize user situations (i.e., still or active). If our model confirms that the user context is still, then there is a high probability of being sedentary. Then, we process the environmental sound to recognize the micro-context, such as working on a computer or watching television during leisure time. Our goal is to reduce sedentary behaviour by suggesting preventive interventions to take short breaks during prolonged sitting to be more active. We achieve this goal by providing the visualization to the user, who wants to monitor his/her sedentary behaviour to reduce unhealthy routines for self-management purposes. The main contribution of this paper is two-fold: (i) an initial implementation of the proposed framework supporting real-time context identification; (ii) testing and evaluation of the framework, which suggest that our application is capable of substantially reducing sedentary behaviour and assisting users to be active.
机译:久坐行为由于社会变化而增加,并且与长时间坐着有关。有足够的证据表明,久坐的行为会对人们的健康造成不利影响。本文介绍了我们的研究成果,即如何利用智能手机的车载传感器挖掘久坐行为的时间背景。我们使用智能手机的加速度传感器来识别用户情况(即静止或活动)。如果我们的模型确认用户上下文仍然静止,则很可能久坐。然后,我们处理环境声音以识别微上下文,例如在闲暇时间在计算机上工作或看电视。我们的目标是通过建议预防性干预措施来减少久坐行为,这种干预措施是在长时间坐着时要稍作休息以使其更加活跃。我们通过向用户提供可视化效果来实现此目标,该用户希望监控自己的久坐行为以减少出于自我管理目的的不健康习惯。本文的主要贡献有两个方面:(i)支持实时上下文识别的提议框架的初步实施; (ii)测试和评估框架,这表明我们的应用程序能够大大减少久坐的行为并帮助用户保持活跃。

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