Spectral Human Flow Counting with RSSI in Wireless Sensor Networks

S. Doong
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引用次数: 13

Abstract

Human flow counting is a fundamental task in public space management. Counting flow correctly may help prevent overcrowding hazards and improve public safety. This study proposes an automated device-free flow counting system by exploiting radio frequency irregularity in a wireless sensor network. As people pass through the line-of-sight between transmitters and receivers, radio frequency transmission is disturbed and received signal strength indicator (RSSI) fluctuates at the receiving ends. Using RSSI fluctuation series, the system infers flow size without patrons' carrying any special devices. A wireless sensor network with HBE-Zigbex motes (IEEE 802.15.4) is set up to conduct experiments. Besides the mean and standard deviation of RSSI fluctuation series, Fourier spectral features are also employed as predictors of a machine learning algorithm. Experimental results show that spectral features improve the prediction accuracy significantly. The proposed method thus provides an alternative solution for the flow counting problem in addition to other video based solutions.
无线传感器网络中RSSI的频谱人流量计数
人流统计是公共空间管理的一项基础性工作。正确计算流量可能有助于防止过度拥挤的危险,并改善公共安全。本研究提出了一种利用无线传感器网络中的射频不规则性的自动无设备流量计数系统。当人们穿过发射器和接收器之间的视线时,射频传输受到干扰,接收端接收信号强度指标(RSSI)出现波动。系统采用RSSI波动级数,在用户不携带任何特殊装置的情况下,可以推断出流量大小。建立了HBE-Zigbex无线传感器网络(IEEE 802.15.4)进行实验。除了RSSI波动序列的均值和标准差外,傅里叶谱特征也被用作机器学习算法的预测因子。实验结果表明,光谱特征显著提高了预测精度。因此,除了其他基于视频的解决方案之外,所提出的方法还为流量计数问题提供了一种替代解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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