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Wi-Fi CSI Based Human Sign Language Recognition using LSTM Network

机译:使用LSTM网络的基于Wi-Fi CSI的人类手语识别

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Human sign language gesture recognition is an emerging application in the domain of Wi-Fi-based recognition. The recognition application utilizes the Channel State Information (CSI) of the Wi-Fi signal and captures the human gestures as signal amplitude and phase values. Most existing gesture recognition studies utilize only the amplitude values ignoring the phase information. Few works use both amplitude and phase information for recognition application. Besides, the existing studies adopt deep learning networks, especially Convolutional Neural Network (CNN), to improve recognition performance better. This motivates the present work to study the influence of using (i) amplitude values and (ii) amplitude and phase values together, using the Long Short-Term Memory (LSTM) network, as an alternate for CNN. Moreover, the proposed LSTM framework is fed with the CSI values without much pre-processing applied on it, except standardizing the data to make it more suitable for classification. This paper applies the proposed LSTM framework on a public sign language gesture dataset, SignFi with Adam and SGDM optimizer and analyses the performance with increasing hidden units. LSTM reported better recognition performance using Adam with 150 hidden units, and reported 99.8%, 99.5%, 99.4% and 78.0% for lab 276, home 276, lab+home 276 and lab 150 datasets, respectively.
机译:人类手语手势识别是基于Wi-Fi的识别领域的一个新兴应用。识别应用程序利用Wi-Fi信号的通道状态信息(CSI),并将人体手势捕获为信号振幅和相位值。大多数现有的手势识别研究只利用振幅值,而忽略了相位信息。很少有工作同时使用振幅和相位信息进行识别应用。此外,现有的研究采用深度学习网络,尤其是卷积神经网络(CNN),以更好地提高识别性能。这促使目前的工作研究(i)振幅值和(ii)振幅和相位值一起使用的影响,使用长-短期记忆(LSTM)网络,作为CNN的替代。此外,除了使数据标准化以使其更适合分类之外,所提出的LSTM框架不需要对其进行太多的预处理就可以输入CSI值。本文将提出的LSTM框架应用于一个公共手语手势数据集SINGFI和Adam以及SGDM优化器,并分析了增加隐藏单元时的性能。LSTM报告了使用Adam和150个隐藏单元时更好的识别性能,对于lab 276、home 276、lab+home 276和lab 150数据集,分别报告了99.8%、99.5%、99.4%和78.0%。

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