SiMWiSense: Simultaneous Multi-Subject Activity Classification Through Wi-Fi Signals

Khandaker Foysal Haque, Milin Zhang, Francesco Restuccia
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引用次数: 1

Abstract

Recent advances in Wi-Fi sensing have ushered in a plethora of pervasive applications in home surveillance, remote healthcare, road safety, and home entertainment, among others. Most of the existing works are limited to the activity classification of a single human subject at a given time. Conversely, a more realistic scenario is to achieve simultaneous, multi-subject activity classification. The first key challenge in that context is that the number of classes grows exponentially with the number of subjects and activities. Moreover, it is known that Wi-Fi sensing systems struggle to adapt to new environments and subjects. To address both issues, we propose SiMWiSense, the first framework for simultaneous multi-subject activity classification based on Wi-Fi that generalizes to multiple environments and subjects. We address the scalability issue by using the Channel State Information (CSI) computed from the device positioned closest to the subject. We experimentally prove this intuition by confirming that the best accuracy is experienced when the CSI computed by the transceiver positioned closest to the subject is used for classification. To address the generalization issue, we develop a brand-new few-shot learning algorithm named Feature Reusable Embedding Learning (FREL). Through an extensive data collection campaign in 3 different environments and 3 subjects performing 20 different activities simultaneously, we demonstrate that SiMWiSense achieves classification accuracy of up to 97%, while FREL improves the accuracy by 85% in comparison to a traditional Convolutional Neural Network (CNN) and up to 20% when compared to the state-of-the-art few-shot embedding learning (FSEL), by using only 15 seconds of additional data for each class. For reproducibility purposes, we share our 1 TB dataset and code repository1 [1].1https://github.com/kfoysalhaque/SiMWiSense
SiMWiSense:通过Wi-Fi信号同时进行多主体活动分类
Wi-Fi传感技术的最新进展已经在家庭监控、远程医疗、道路安全和家庭娱乐等领域带来了大量无处不在的应用。现有的工作大多局限于在给定时间对单个人类主体的活动进行分类。相反,更现实的情况是实现同时的多主题活动分类。在这种情况下的第一个关键挑战是,班级的数量随着科目和活动的数量呈指数级增长。此外,众所周知,Wi-Fi传感系统难以适应新的环境和对象。为了解决这两个问题,我们提出了SiMWiSense,这是第一个基于Wi-Fi的同时多主题活动分类框架,可推广到多个环境和主题。我们通过使用从最靠近主题的设备计算的通道状态信息(CSI)来解决可伸缩性问题。我们通过实验证明了这一直觉,证实了当放置在最靠近主题的收发器计算的CSI用于分类时,可以获得最佳精度。为了解决泛化问题,我们开发了一种全新的少采样学习算法,称为特征可重用嵌入学习(FREL)。通过在3种不同环境和3个受试者同时执行20种不同活动的广泛数据收集活动,我们证明SiMWiSense实现了高达97%的分类准确率,而与传统卷积神经网络(CNN)相比,FREL的准确率提高了85%,与最先进的少镜头嵌入学习(FSEL)相比,准确率提高了20%,每个类仅使用15秒的额外数据。出于可再现性的考虑,我们共享1tb数据集和代码库[1].1https://github.com/kfoysalhaque/SiMWiSense
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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