Abstract

Since the outbreak of the world-wide novel coronavirus pandemic, crowd counting in public areas, such as in shopping centers and in commercial streets, has gained popularity among public health administrations for preventing the crowds from gathering. In this paper, we propose a novel adaptive method for crowd counting based on Wi-Fi channel state information (CSI) by using common commercial wireless routers. Compared with previous researches on device-free crowd counting, our proposed method is more adaptive to the change of environment and can achieve high accuracy of crowd count estimation. Because the distance between access point (AP) and monitor point (MP) is typically non-fixed in real-world applications, the strength of received signals varies and makes the traditional amplitude-related models to perform poorly in different environments. In order to achieve adaptivity of the crowd count estimation model, we used convolutional neural network (ConvNet) to extract features from correlation coefficient matrix of subcarriers which are insensitive to the change of received signal strength. We conducted experiments in university classroom settings and our model achieved an overall accuracy of 97.79% in estimating a variable number of participants.

Highlights

  • Wi-Fi has gained an increasing interest in research due to the implementation of orthogonal frequency-division multiplexing (OFDM) and multiple-input multiple-output (MIMO) technology

  • In telecommunication with high throughput and multiantenna, the channel state information (CSI) can make the transmissions adapt to current channel condition, which is of great significance

  • We introduce an adaptive model for human crowd count estimation by exploiting rich CSI data embedded in 802.11n Wi-Fi networks

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Summary

Introduction

Wi-Fi has gained an increasing interest in research due to the implementation of orthogonal frequency-division multiplexing (OFDM) and multiple-input multiple-output (MIMO) technology. Many researchers have paid much attention on human crowd counting based on the widely deployed wireless routers in public areas. Image-based methods are most often used to estimate the human crowd count, but they are limited to the illumination intensity of environment, line-of-sight propagation property of light, and the public consideration of privacy [9,10,11,12,13,14,15,16,17,18]. We introduce an adaptive model for human crowd count estimation by exploiting rich CSI data embedded in 802.11n Wi-Fi networks.

Background and Related Works
Data Preprocessing
Feature Extraction
Description of Convnet’s Layers and Parameters
The Learning Rate
Batch Normalization
Softmax Function
Layout of Experiment Classroom
Training the ConvNet Classification Model
Conclusion
Full Text
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