Background Subtraction for Online Calibration of Baseline RSS in RF Sensing Networks
Andrea Edelstein, Michael Rabbat

TL;DR
This paper introduces a novel approach that applies background subtraction techniques from computer vision to estimate baseline RSS in RF sensing networks, enabling effective tracking without prior calibration.
Contribution
It adapts background subtraction algorithms for RF sensing, allowing online baseline estimation in environments where offline calibration is impractical.
Findings
Accurately estimates baseline RSS without calibration.
Enables RF tomographic tracking in diverse environments.
Reduces need for offline calibration data.
Abstract
Radio frequency (RF) sensing networks are a class of wireless sensor networks (WSNs) which use RF signals to accomplish tasks such as passive device-free localization and tracking. The algorithms used for these tasks usually require access to measurements of baseline received signal strength (RSS) on each link. However, it is often impossible to collect this calibration data (measurements collected during an offline calibration period when the region of interest is empty of targets). We propose adapting background subtraction methods from the field of computer vision to estimate baseline RSS values from measurements taken while the system is online and obstructions may be present. This is done by forming an analogy between the intensity of a background pixel in an image and the baseline RSS value of a WSN link and then translating the concepts of temporal similarity, spatial similarity…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Microwave Imaging and Scattering Analysis · Sparse and Compressive Sensing Techniques
