基于WiFi信号CSI的人群计数估计的人类检测

Omotayo Oshiga, Hussein U. Suleiman, Sadiq Thomas, P. Nzerem, Labaran Farouk, Steve A. Adeshina
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引用次数: 9

摘要

我们使用WiFi信号的匿名和非参与性CSI来解决室内活动等情况下的人群估计问题。观察到信道状态信息(CSI,一种从接收到的Wi-Fi信号中捕获的细粒度信息)与纹理的巨大相似性,我们提出了一个基于统计力学的全新框架,仅依赖于一组机器学习技术。本文提出了一种基于切比雪夫滤波和奇异值分解的人群计数估计框架,该框架利用切比雪夫滤波和奇异值分解去除CSI数据中的背景噪声,利用PCA对CSI数据进行降维,利用光谱描述符进行特征提取。从提取的特征中,然后使用一组分类算法来训练和测试我们的人群估计框架的准确性。该框架的目的是有效和高效地提取由人体存在所反映的OFDM载波中WiFi信号中的信道信息。通过实验验证了该框架的可行性和有效性。我们的结果表明,当人群数量增加时,我们的估计变得更加准确,而不是更不准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Detection For Crowd Count Estimation Using CSI of WiFi Signals
We address the problem of crowd estimation in situations such as indoor events using anonymous and non-participatory CSI of WiFi Signals. Observing the great resemblance of Channel State Information (CSI, a finegrained information captured from the received Wi-Fi signal) to texture, we propose a brand-new framework based on statistical mechanics, and relying only on sets of machine learning techniques.In this paper, a framework for crowd count estimation is presented which utilizes Chebyshev filter and SVD to remove background noise in the CSI data, PCA to reduce the dimensionality of the CSI data and spectral descriptors for feature extraction. From the extracted feature, a set of classiffying algorithms are then utilised for training and testing the accuracy of our crowd estimation framework The aim of this framework to effectively and efficiently extract the channel information in WiFi signals across OFDM carriers reflected by the presence of human bodies. From the experiments conducted, we demonstrate the feasibility and efficacy of the proposed framework. Our result depict that our estimation becomes more–rather than less–accurate when the crowd count increases.
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