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HumanFi: WiFi-Based Human Identification Using Recurrent Neural Network

机译:人力学:基于WIFI的人类识别使用反复性神经网络

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Because of the uniqueness of human gait, the WiFi signal reflected by a walking person can generate a distinctive variation in the received WiFi channel state information (CSI). In this paper, we present a new passive human identification method named HumanFi based on fine-grained gait patterns captured by commercial WiFi device and long short term memory network (LSTM). Firstly, CSI measurements are collected by a commercial WiFi device, and then a buffer and filtering mechanism-based gait detection algorithm is proposed to solve the effects of short-term anomalous fluctuation. After that, a recurrent neural network, LSTM, is used to identify different people by discriminating the temporal characteristics of automatically extracted human gait features. We evaluated the proposed HumanFi using a dataset with 1920 gait instances collected from 24 human subjects walking in two different scenes. Experimental results showed that HumanFi achieved more than 96% human identification accuracy, which demonstrated the good performance of HumanFi on non-intrusive human identification tasks.
机译:由于人体步态的唯一性,由行走者反射的WiFi信号可以在所接收的WiFi信道状态信息(CSI)中产生独特的变化。在本文中,我们提出了一种基于商业WiFi器件和长短期内存网络(LSTM)捕获的细粒度步态图案的新被动人体识别方法。首先,CSI测量由商业WiFi器件收集,然后提出了一种缓冲器和滤波机构的步态检测算法来解决短期异常波动的影响。之后,通过鉴别自动提取的人态步态特征的时间特征来使用经常性神经网络LSTM来识别不同的人。我们使用从24个人受试者中收集的1920个步态实例评估了所提出的人员,从两种不同的场景中行走。实验结果表明,人力学费取得了超过96%的人体鉴定精度,这表明人类对非侵入式人体识别任务的良好表现。

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