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Autori principali: Guo, Jingtao, Zhuang, Wenhao, Mao, Yuyi, Ho, Ivan Wang-Hei
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2410.11400
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author Guo, Jingtao
Zhuang, Wenhao
Mao, Yuyi
Ho, Ivan Wang-Hei
author_facet Guo, Jingtao
Zhuang, Wenhao
Mao, Yuyi
Ho, Ivan Wang-Hei
contents Passenger counting is crucial for public transport vehicle scheduling and traffic capacity evaluation. However, most existing methods are either costly or with low counting accuracy, leading to the recent use of Wi-Fi signals for this purpose. In this paper, we develop an efficient edge computing-based passenger counting system consists of multiple Wi-Fi receivers and an edge server. It leverages channel state information (CSI) and received signal strength indicator (RSSI) to facilitate the collaboration among multiple receivers. Specifically, we design a novel CSI feature fusion module called Adaptive RSSI-weighted CSI Feature Concatenation, which integrates locally extracted CSI and RSSI features from multiple receivers for information fusion at the edge server. Performance of our proposed system is evaluated using a real-world dataset collected from a double-decker bus in Hong Kong, with up to 20 passengers. The experimental results reveal that our system achieves an average accuracy and F1-score of over 94%, surpassing other cooperative sensing baselines by at least 2.27% in accuracy and 2.34% in F1-score.
format Preprint
id arxiv_https___arxiv_org_abs_2410_11400
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle RSSI-Assisted CSI-Based Passenger Counting with Multiple Wi-Fi Receivers
Guo, Jingtao
Zhuang, Wenhao
Mao, Yuyi
Ho, Ivan Wang-Hei
Signal Processing
Machine Learning
Passenger counting is crucial for public transport vehicle scheduling and traffic capacity evaluation. However, most existing methods are either costly or with low counting accuracy, leading to the recent use of Wi-Fi signals for this purpose. In this paper, we develop an efficient edge computing-based passenger counting system consists of multiple Wi-Fi receivers and an edge server. It leverages channel state information (CSI) and received signal strength indicator (RSSI) to facilitate the collaboration among multiple receivers. Specifically, we design a novel CSI feature fusion module called Adaptive RSSI-weighted CSI Feature Concatenation, which integrates locally extracted CSI and RSSI features from multiple receivers for information fusion at the edge server. Performance of our proposed system is evaluated using a real-world dataset collected from a double-decker bus in Hong Kong, with up to 20 passengers. The experimental results reveal that our system achieves an average accuracy and F1-score of over 94%, surpassing other cooperative sensing baselines by at least 2.27% in accuracy and 2.34% in F1-score.
title RSSI-Assisted CSI-Based Passenger Counting with Multiple Wi-Fi Receivers
topic Signal Processing
Machine Learning
url https://arxiv.org/abs/2410.11400