Score: 0

mmCounter: Static People Counting in Dense Indoor Scenarios Using mmWave Radar

Published: December 11, 2025 | arXiv ID: 2512.10357v1

By: Tarik Reza Toha , Shao-Jung , Lu and more

Potential Business Impact:

Counts hidden people by their tiny breaths.

Business Areas:
Indoor Positioning Navigation and Mapping

mmWave radars struggle to detect or count individuals in dense, static (non-moving) groups due to limitations in spatial resolution and reliance on movement for detection. We present mmCounter, which accurately counts static people in dense indoor spaces (up to three people per square meter). mmCounter achieves this by extracting ultra-low frequency (< 1 Hz) signals, primarily from breathing and micro-scale body movements such as slight torso shifts, and applying novel signal processing techniques to differentiate these subtle signals from background noise and nearby static objects. Our problem differs significantly from existing studies on breathing rate estimation, which assume the number of people is known a priori. In contrast, mmCounter utilizes a novel multi-stage signal processing pipeline to extract relevant low-frequency sources along with their spatial information and map these sources to individual people, enabling accurate counting. Extensive evaluations in various environments demonstrate that mmCounter delivers an 87% average F1 score and 0.6 mean absolute error in familiar environments, and a 60% average F1 score and 1.1 mean absolute error in previously untested environments. It can count up to seven individuals in a three square meter space, such that there is no side-by-side spacing and only a one-meter front-to-back distance.

Country of Origin
🇺🇸 United States

Page Count
12 pages

Category
Computer Science:
CV and Pattern Recognition