论文标题

使用无线电模式的可穿戴RFID系统,用于实时活动识别

Toward a Wearable RFID System for Real-Time Activity Recognition Using Radio Patterns

论文作者

Wang, Liang, Gu, Tao, Tao, Xianping, Lu, Jian

论文摘要

老年护理是实时活动识别系统支持的众多应用之一。传统方法使用来自各种来源的摄像机,车身传感器网络或无线电模式进行活动识别。但是,由于易用性,保险或保留问题,这些方法受到限制。在本文中,我们提出了一种新型的可穿戴射频标识(RFID)系统,旨在提供易于使用的解决方案,并具有高检测覆盖率。我们的系统使用无维护的被动标签,可以嵌入衣服中以减少磨损和维护工作。在用户移动时,还戴着一个小的RFID读取器,以扩大检测覆盖范围。我们利用RFID无线电图案并提取空间和时间特征来表征各种活动。我们还解决了标签读数和标签/天线校准的虚假负面问题的问题,并设计了快速的在线识别系统。自动进行天线和标签选择,以探索实现目标准确性所需的最小设备数量。我们开发了一个原型系统,该系统由可穿戴的RFID系统和智能手机组成,以展示工作原理,并在两周内对四个受试者进行实验研究。结果表明,我们的系统达到了93.6%的高识别精度,潜伏期为5秒。此外,我们表明该系统仅需要两个天线和四个标记的身体部位即可达到85%的高识别精度。

Elderly care is one of the many applications supported by real-time activity recognition systems. Traditional approaches use cameras, body sensor networks, or radio patterns from various sources for activity recognition. However, these approaches are limited due to ease-of-use, coverage, or privacy preserving issues. In this paper, we present a novel wearable Radio Frequency Identification (RFID) system aims at providing an easy-to-use solution with high detection coverage. Our system uses passive tags which are maintenance-free and can be embedded into the clothes to reduce the wearing and maintenance efforts. A small RFID reader is also worn on the user's body to extend the detection coverage as the user moves. We exploit RFID radio patterns and extract both spatial and temporal features to characterize various activities. We also address the issues of false negative of tag readings and tag/antenna calibration, and design a fast online recognition system. Antenna and tag selection is done automatically to explore the minimum number of devices required to achieve target accuracy. We develop a prototype system which consists of a wearable RFID system and a smartphone to demonstrate the working principles, and conduct experimental studies with four subjects over two weeks. The results show that our system achieves a high recognition accuracy of 93.6 percent with a latency of 5 seconds. Additionally, we show that the system only requires two antennas and four tagged body parts to achieve a high recognition accuracy of 85 percent.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源