Infrastructure-Free Indoor Occupancy Estimation via Passive BLE Scanning EICS026
Venkata Srikanth Varma Datla, Alessandro Aiuti, Alba Bisante, Gabriella Trasciatti, Stefano Zeppieri, Emanuele Panizzi
Accurately estimating indoor occupancy is fundamental to the development of modern smart buildings, which aim to optimize critical parameters such as Heating, Ventilation, and Air Conditioning (HVAC) control, safety, and resource management in real time to reduce energy waste. Traditional sensing approaches, including cameras, Passive Infrared (PIR) sensors, and CO
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monitors, often encounter high deployment costs, maintenance overhead, and significant privacy concerns, particularly under General Data Protection Regulation (GDPR) regulations. This paper presents the design, implementation, and evaluation of a non-invasive occupancy estimation system that exclusively relies on Bluetooth Low Energy (BLE) scans performed via a mobile device, eliminating the need for prior structural information or dedicated sensing infrastructure. The proposed method analyzes statistical differences between various university environments, such as
Based on a foundational study of device ownership behavior, we develop context-dependent calibration coefficients to address the multi-device phenomenon, in which a single occupant may carry multiple Bluetooth Low Energy emitters. Our system utilizes a three-layer architecture that includes