RateCount: Learning-Free Device Counting by Wi-Fi Probe Listening
Journal:
arXiv
Published Date:
Jul 5, 2025
Abstract
A Wi-Fi-enabled device, or simply Wi-Fi device, sporadically broadcasts probe
request frames (PRFs) to discover nearby access points (APs), whether connected
to an AP or not. To protect user privacy, unconnected devices often randomize
their MAC addresses in the PRFs, known as MAC address randomization. While
prior works have achieved accurate device counting under MAC address
randomization, they typically rely on machine learning, resulting in
inefficient deployment due to the time-consuming processes of data cleaning,
model training, and hyperparameter tuning. To enhance deployment efficiency, we
propose RateCount, an accurate, lightweight, and learning-free counting
approach based on the rate at which APs receive PRFs within a window. RateCount
employs a provably unbiased closed-form expression to estimate the device count
time-averaged over the window and an error model to compute the lower bound of
the estimation variance. We also demonstrate how to extend RateCount to people
counting by incorporating a device-to-person calibration scheme. Through
extensive real-world experiments conducted at multiple sites spanning a wide
range of counts, we show that RateCount, without any deployment costs for
machine learning, achieves comparable counting accuracy with the
state-of-the-art learning-based device counting and improves previous people
counting schemes by a large margin.