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Human Activity Recognition and Prediction Based on Wi-Fi Channel State Information and Machine Learning

机译:基于Wi-Fi频道状态信息和机器学习的人类活动识别与预测

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At present, we are moving into the era of the Internet of Things. In this new era, it will be easy to find access points (APs) wherever we go. Signals from these APs can be used for more than just connecting to the Internet. The presence of a human between two APs and the human’s behavior cause a change in the waveform of a Wi-Fi signal. In this paper, we explain how changes in waveforms affect the channel state information of the signal and how machine learning can utilize that information to recognize and predict human behavior.
机译:目前,我们正在进入物联网的时代。在这个新的时代,无论我们走到哪里,都很容易找到接入点(APS)。来自这些AP的信号可以用于多于连接到Internet。在两个AP之间存在人和人类行为的存在导致Wi-Fi信号的波形变化。在本文中,我们解释了波形的变化如何影响信号的信道状态信息以及机器学习如何利用该信息来识别和预测人类行为。

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