基于机器学习的老年人跌倒检测系统,使用无源RFID传感器标签

K. Toda, N. Shinomiya
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引用次数: 8

摘要

老年人在世界人口中的比例一直在迅速增加。因此,对特殊疗养院和专业护理人员的需求也在增长,以支持老年人的日常活动。由于老年人在跌倒后往往无法在没有帮助的情况下站起来,未能发现跌倒事故可能进一步导致严重伤害。因此,早期发现跌倒对于降低老年人因意外事故住院和死亡的风险至关重要。为了促进早期跌倒检测,开发了基于物联网的老年人监测服务。本文提出的系统采用无源RFID传感器标签,该标签由RFMicron公司的Magnus S芯片组成,不仅可以测量RSSI,还可以测量压力。在我们的方法中,这些标签附着在室内鞋类上,并在活动期间获得RSSI和压力值的变化。我们的实验是通过从原始数据中提取特征并使用机器学习对活动进行分类来进行的。本文展示了两个具有不同特征集的训练模型,以评估无源传感器标签的有效性。此外,研究结果还验证了个体依赖和个体独立在不同受试者数据集上的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based fall detection system for the elderly using passive RFID sensor tags
The percentage of elderly people in the world population has been rapidly increasing. Accordingly, the demand for special nursing homes and professional caregivers has also been growing to support the elderly's daily activities. Since elderly people are often unable to get up without assistance after falling, the failure to detect falling accidents can further lead to serious injuries. Hence, early fall detection is crucial to reduce the risk of the elderly's hospitalization and death caused by accidents. In order to promote early fall detection, monitoring services for elderly people based on IoT have been developed. In this paper, the proposed system uses passive RFID sensor tag is composed RFMicron's Magnus S chip, which can measure not only RSSI but also pressure. In our approach, those tags are attached to the indoor footwear and obtain a change of RSSI and pressure values during activity. Our experiment is conducted by extracting features from raw data and classifying activities with machine learning. This paper shows two training models with a different feature set developed in order to evaluate the effectiveness of passive sensor tags. Moreover, the results demonstrate the accuracy of person-dependent and person-independent with the dataset from different subjects.
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