你的一天在你的口袋:复杂的活动识别从智能手机加速度计

Emma Bouton--Bessac, L. Meegahapola, D. Gática-Pérez
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引用次数: 2

摘要

人类活动识别(HAR)实现了上下文感知的用户体验,移动应用程序可以根据用户活动改变内容和交互。因此,智能手机对HAR来说变得很有价值,因为它们允许大量和多样化的数据收集。尽管先前在HAR方面的工作设法利用惯性传感器(即加速度计)以良好的精度检测简单的活动(即坐、走、跑),但识别复杂的日常活动仍然是一个悬而未决的问题,特别是在人们久坐不动的远程工作/学习环境中。此外,了解一个人的日常活动可以支持创建旨在支持他们健康的应用程序。本文专门研究了智能手机加速度计数据对复杂活动的识别。我们使用了大流行期间从五个国家的600多名用户收集的大型智能手机传感数据集,结果表明,使用部分个性化模型,可以实现基于深度学习的八种复杂活动(睡觉、吃饭、看视频、在线交流、听讲座、运动、购物、学习)的二元分类,AUROC分数高达0.76。这显示了在大流行后世界仅使用手机加速计数据评估复杂活动的令人鼓舞的迹象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Your Day in Your Pocket: Complex Activity Recognition from Smartphone Accelerometers
Human Activity Recognition (HAR) enables context-aware user experiences where mobile apps can alter content and interactions depending on user activities. Hence, smartphones have become valuable for HAR as they allow large, and diversified data collection. Although previous work in HAR managed to detect simple activities (i.e., sitting, walking, running) with good accuracy using inertial sensors (i.e., accelerometer), the recognition of complex daily activities remains an open problem, specially in remote work/study settings when people are more sedentary. Moreover, understanding the everyday activities of a person can support the creation of applications that aim to support their well-being. This paper investigates the recognition of complex activities exclusively using smartphone accelerometer data. We used a large smartphone sensing dataset collected from over 600 users in five countries during the pandemic and showed that deep learning-based, binary classification of eight complex activities (sleeping, eating, watching videos, online communication, attending a lecture, sports, shopping, studying) can be achieved with AUROC scores up to 0.76 with partially personalized models. This shows encouraging signs toward assessing complex activities only using phone accelerometer data in the post-pandemic world.
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