Wi-Gitation:用于肢体躁动活动识别的复制 Wi-Fi CSI 数据集

Data Pub Date : 2023-12-30 DOI:10.3390/data9010009
Nikita Sharma, J. K. Brinke, L. M. A. B. Jansen, Paul J. M. Havinga, Duc V. Le
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引用次数: 0

摘要

躁动是晚期痴呆症患者的常见行为症状。需要对其进行持续监测,以了解躁动程度,协助护理人员提供适当的护理。现有的监测技术使用摄像头和可穿戴设备,这些设备会给老年人带来困扰和干扰,因此常常被老年人所拒绝。为了在老年人护理过程中实现连续监测,可以利用无干扰的 Wi-Fi 信道状态信息 (CSI) 来监测与躁动有关的身体活动。然而,据我们所知,目前还没有现实的 CSI 数据集可用于对躁动场景中表现出的肢体活动进行分类,如走动不安、重复坐起、敲击表面、拧手、在表面上摩擦、翻转物体和踢脚等。因此,我们在本文中提出了一个名为 Wi-Gitation 的公共数据集。在 Wi-Gitation 数据集中,我们收集了 23 名健康参与者的 Wi-Fi CSI 数据,这些数据描述了他们在一居室公寓中两个不同地点的上述与躁动相关的身体活动,多个接收器被放置在距离参与者不同的距离(0.5-8 米)处。Wi-Gitation 数据集的验证结果表明,在采用混合数据分析(即训练数据和测试数据具有相同的分布)时,准确率更高(F1 分数≥0.95)。相反,在训练数据和测试数据分布不同的情况下(即leave-one-out),准确率明显下降(F1-Scores ≤0.21)。该数据集可用于 CSI 信号的基础研究,也可用于评估为解决基于 CSI 的人类活动识别中的域不变性问题而开发的先进算法。
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Wi-Gitation: Replica Wi-Fi CSI Dataset for Physical Agitation Activity Recognition
Agitation is a commonly found behavioral condition in persons with advanced dementia. It requires continuous monitoring to gain insights into agitation levels to assist caregivers in delivering adequate care. The available monitoring techniques use cameras and wearables which are distressful and intrusive and are thus often rejected by older adults. To enable continuous monitoring in older adult care, unobtrusive Wi-Fi channel state information (CSI) can be leveraged to monitor physical activities related to agitation. However, to the best of our knowledge, there are no realistic CSI datasets available for facilitating the classification of physical activities demonstrated during agitation scenarios such as disturbed walking, repetitive sitting–getting up, tapping on a surface, hand wringing, rubbing on a surface, flipping objects, and kicking. Therefore, in this paper, we present a public dataset named Wi-Gitation. For Wi-Gitation, the Wi-Fi CSI data were collected with twenty-three healthy participants depicting the aforementioned agitation-related physical activities at two different locations in a one-bedroom apartment with multiple receivers placed at different distances (0.5–8 m) from the participants. The validation results on the Wi-Gitation dataset indicate higher accuracies (F1-Scores ≥0.95) when employing mixed-data analysis, where the training and testing data share the same distribution. Conversely, in scenarios where the training and testing data differ in distribution (i.e., leave-one-out), the accuracies experienced a notable decline (F1-Scores ≤0.21). This dataset can be used for fundamental research on CSI signals and in the evaluation of advanced algorithms developed for tackling domain invariance in CSI-based human activity recognition.
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