ReWiS:通过少拍多天线多接收机CSI学习可靠的Wi-Fi传感

Niloofar Bahadori, J. Ashdown, Francesco Restuccia
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引用次数: 10

摘要

由于Wi-Fi接入点和设备无处不在,Wi-Fi传感使远程医疗保健、家庭/办公室安全和监控等领域的变革性应用成为可能。现有的工作已经探索了机器学习在从Wi-Fi数据包计算的信道状态信息(CSI)上的使用,以对感兴趣的事件进行分类。然而,这些算法中的大多数都需要大量的数据收集,以及用于额外CSI特征提取的广泛计算能力。此外,当在新的/未经训练的环境中进行测试时,大多数模型的准确性都很差。在本文中,我们提出了ReWiS,一个鲁棒和环境无关的Wi-Fi传感的新框架。ReWiS的关键创新是利用少镜头学习(FSL)作为推理引擎,这(i)减少了对大量数据收集和特定应用特征提取的需求;(ii)仅利用少量新样本就能迅速推广到新环境。此外,ReWiS利用多天线、多接收机分集以及细粒度频率分辨率来提高算法的整体鲁棒性。最后,我们提出了一种基于奇异值分解(SVD)的技术,使FSL输入与接收天线的数量无关。我们使用现成的Wi-Fi设备对ReWiS进行原型设计,并通过考虑一个引人注目的人类活动识别用例来展示其性能。因此,我们在三个不同的传播环境中与两个人类受试者进行了广泛的数据收集活动。我们评估了每个多样性成分对性能的影响,并将ReWiS与现有的基于卷积神经网络(CNN)的方法进行了比较。实验结果表明,与现有的单天线低分辨率方法相比,ReWiS的性能提高了约40%。此外,与基于CNN的方法相比,在不同环境下测试时,ReWiS的准确率提高了35%,准确率下降不到10%,而CNN的准确率下降了45%以上。为了让我们的结果重现,并解决当前Wi-Fi传感数据集的短缺问题,我们承诺将我们的60 GB数据集和整个代码库发布给社区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ReWiS: Reliable Wi-Fi Sensing Through Few-Shot Multi-Antenna Multi-Receiver CSI Learning
Thanks to the ubiquitousness of Wi-Fi access points and devices, Wi-Fi sensing enables transformative applications in remote health care, home/office security, and surveillance, just to name a few. Existing work has explored the usage of machine learning on channel state information (CSI) computed from Wi-Fi packets to classify events of interest. However, most of these algorithms require a significant amount of data collection, as well as extensive computational power for additional CSI feature extraction. Moreover, the majority of these models suffer from poor accuracy when tested in a new/untrained environment. In this paper, we propose ReWiS, a novel framework for robust and environment-independent Wi-Fi sensing. The key innovation of ReWiS is to leverage few-shot learning (FSL) as the inference engine, which (i) reduces the need for extensive data collection and application-specific feature extraction; (ii) can rapidly generalize to new environments by leveraging only a few new samples. Moreover, ReWiS leverages multi-antenna, multi-receiver diversity, as well as fine-grained frequency resolution, to improve the overall robustness of the algorithms. Finally, we propose a technique based on singular value decomposition (SVD) to make the FSL input constant irrespective of the number of receive antennas. We prototype the ReWiS using off-the-shelf Wi-Fi equipment and showcase its performance by considering a compelling use case of human activity recognition. Thus, we perform an extensive data collection campaign in three different propagation environments with two human subjects. We evaluate the impact of each diversity component on the performance and compare ReWiS with an existing convolutional neural network (CNN)-based approach. Experimental results show that ReWiS improves the performance by about 40% with respect to existing single-antenna low-resolution approaches. Moreover, when compared to a CNN-based approach, ReWiS shows a 35% more accuracy and less than 10% drop in accuracy when tested in different environments, while the CNN drops by more than 45%. To allow reproducibility of our results and to address the current dearth of Wi-Fi sensing datasets, we pledge to release our 60 GB dataset and the entire code repository to the community.
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