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首页> 外文期刊>Pervasive and Mobile Computing >Centinela: A human activity recognition system based on acceleration and vital sign data
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Centinela: A human activity recognition system based on acceleration and vital sign data

机译:Centinela:基于加速度和生命体征数据的人类活动识别系统

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摘要

This paper presents Centinela, a system that combines acceleration data with vital signs to achieve highly accurate activity recognition. Centinela recognizes five activities: walking, running, sitting, ascending, and descending. The system includes a portable and unobtrusive real-time data collection platform, which only requires a single sensing device and a mobile phone. To extract features, both statistical and structural detectors are applied, and two new features are proposed to discriminate among activities during periods of vital sign stabilization. After evaluating eight different classifiers and three different time window sizes, our results show that Centinela achieves up to 95.7% overall accuracy, which is higher than current approaches under similar conditions. Our results also indicate that vital signs are useful to discriminate between certain activities. Indeed, Centinela achieves 100% accuracy for activities such as running and sitting, and slightly improves the classification accuracy for ascending compared to the cases that utilize acceleration data only.
机译:本文介绍了Centinela,该系统将加速度数据与生命体征相结合以实现高度准确的活动识别。 Centinela识别五种活动:走路,跑步,坐下,上升和下降。该系统包括一个便携式且无干扰的实时数据收集平台,该平台仅需一个传感设备和一部手机。为了提取特征,统计和结构检测器都被应用,并且提出了两个新的特征来区分生命体征稳定期间的活动。在评估了八个不同的分类器和三个不同的时间窗口大小之后,我们的结果表明Centinela的总体准确率达到了95.7%,这比当前在类似条件下的方法要高。我们的结果还表明,生命体征可用于区分某些活动。的确,与仅使用加速度数据的情况相比,Centinela在诸如跑步和坐下等活动中可达到100%的准确性,并在提升方面稍微提高了分类准确性。

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