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Self-Attention Networks for Human Activity Recognition Using Wearable Devices

机译:使用可穿戴设备的人类活动识别自我关注网络

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Human activity recognition has gained a lot of attention in recent years as it has many potential applications, such as in smart homes, healthcare and sport monitoring. Sensors in wearable devices and smartphones are widely used not only because they are low cost but also because they are not invasive to users and are easy to deploy. However, accurately predicting human activities using wearable devices is challenging as the generated data provides only indirect information about the activities being performed. In this study, we propose a self-attention network that processes data from inertial measurement unit sensors of smartphones to classify common human activities. Self-attention networks are able to extract useful information from time-dependent signals by carefully allocating their focus among relevant input features. Our method was tested along several popular human activity recognition algorithms using two datasets, including a new human activity dataset that is publicly released in this study. Our method consistently obtains state-of-the-art results predicting the activities of the tested datasets with an average accuracy of 97%.
机译:近年来,人类的活动识别率已经提高了很多关注,因为它具有许多潜在的应用,例如智能家庭,医疗保健和体育监测。可穿戴设备和智能手机中的传感器不仅是因为它们的成本低,而且因为它们没有侵入用户并且易于部署。然而,随着所产生的数据仅提供关于正在执行的活动的间接信息,准确地预测使用可穿戴设备的人类活动具有挑战性。在这项研究中,我们提出了一种自我关注网络,该网络从智能手机的惯性测量单元传感器处理数据来分类普遍的人类活动。通过在相关输入特征仔细分配它们的焦点,自我注意网络能够从时间相关信号中提取有用的信息。我们的方法沿着几个流行的人类活动识别算法测试了使用两个数据集,包括在本研究中公开发布的新人类活动数据集。我们的方法一致地获得最先进的结果,预测测试数据集的活动,平均精度为97%。

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