基于无线电的无设备活动识别与无线电频率干扰

Bo Wei, W. Hu, Mingrui Yang, C. Chou
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引用次数: 69

摘要

活动识别是许多普适计算应用程序的重要组成部分。无设备活动识别的优点是,它没有使用相机的隐私问题,而且受试者不必随身携带设备。最近,信道状态信息(CSI)已被证明可以用于无设备设置下的活动识别。随着无线设备的普及,了解射频干扰(RFI)如何影响普及计算应用程序非常重要。在本文中,我们研究了RFI对基于无设备csi的面向位置的活动识别的影响。我们在没有RFI和有RFI的环境中进行实验。我们提供的数据表明,RFI可以对CSI向量产生重大影响。在没有RFI的情况下,不同的活动会产生不同的CSI向量,这些向量可以通过视觉来区分。然而,在RFI的存在下,CSI向量变得更加嘈杂,活动识别也变得更加困难。我们的大量实验表明,最先进的分类方法的性能可能会因RFI而显著下降。然后,我们提出了一些缓解RFI影响的对策,以提高面向位置的活动识别性能。我们的评估表明,在RFI存在的情况下,所提出的方法可以提高高达10%的真检测率。我们还研究了带宽对活动识别性能的影响。我们表明,在信道带宽为20 MHz(由WiFi使用)的情况下,当RFI存在时,可以实现良好的活动识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radio-based device-free activity recognition with radio frequency interference
Activity recognition is an important component of many pervasive computing applications. Device-free activity recognition has the advantage that it does not have the privacy concern of using cameras and the subjects do not have to carry a device on them. Recently, it has been shown that channel state information (CSI) can be used for activity recognition in a device-free setting. With the proliferation of wireless devices, it is important to understand how radio frequency interference (RFI) can impact on pervasive computing applications. In this paper, we investigate the impact of RFI on device-free CSI-based location-oriented activity recognition. We conduct experiments in environments without and with RFI. We present data to show that RFI can have a significant impact on the CSI vectors. In the absence of RFI, different activities give rise to different CSI vectors that can be differentiated visually. However, in the presence of RFI, the CSI vectors become much noisier and activity recognition also becomes harder. Our extensive experiments shows that the performance of state-of-the-art classification methods may degrade significantly with RFI. We then propose a number of counter measures to mitigate the impact of RFI and improve the location-oriented activity recognition performance. Our evaluation shows the proposed method can improve up to 10% true detection rate in the presence of RFI. We also study the impact of bandwidth on activity recognition performance. We show that with a channel bandwidth of 20 MHz (which is used by WiFi), it is possible to achieve a good activity recognition accuracy when RFI is present.
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