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Modeling high-level descriptions of real-life physical activities using latent topic modeling of multimodal sensor signals

机译:使用多模式传感器信号的潜在主题建模对现实生活活动的高级描述进行建模

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We propose a new methodology to model high-level descriptions of physical activities using multimodal sensor signals (ambulatory electrocardiogram (ECG) and accelerometer signals) obtained by a wearable wireless sensor network. We introduce a two-step strategy where the first step estimates likelihood scores over the low-level descriptions of physical activities such as walking or sitting directly from sensor signals and the second step infers the high-level description based on the estimated low-level description scores. Assuming that a high-level description of a certain physical activity may consist of multiple low-level physical activities and a low-level physical activity can be observed in multiple high-level descriptions of physical activities, we introduce the statistical concept of latent topics in physical activities to model the high-level status with low-level descriptions. With an unsupervised approach using a database from unconstrained free-living settings, we show promising results in modeling high-level descriptions of physical activities.
机译:我们提出了一种新的方法,可以使用可穿戴无线传感器网络获得的多模式传感器信号(动态心电图(ECG)和加速度计信号)对体育活动的高级描述进行建模。我们引入了两步策略,其中第一步是直接从传感器信号估算诸如步行或坐等身体活动的低水平描述的似然分数,第二步则基于估算的低水平描述来推断高水平描述分数。假设某个体育活动的高级描述可能包含多个低级别的体育活动,并且在多个高级体育活动描述中可以观察到一个低级别的体育活动,我们将隐性主题的统计概念引入体育活动,以低层描述为高层状态建模。通过使用不受约束的自由活动环境中的数据库的无监督方法,我们在对体育活动的高级描述进行建模时显示出令人鼓舞的结果。

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