SPCVLGMay 2, 2024

An EM Body Model for Device-Free Localization with Multiple Antenna Receivers: A First Study

arXiv:2405.09558v17 citationsh-index: 28APWC
Originality Incremental advance
AI Analysis

This work addresses localization for scenarios where people cannot or do not wear devices, such as in smart environments or security, and is incremental by extending existing models to multi-antenna setups.

The paper tackles device-free localization (DFL) by proposing an array-based framework using an electromagnetic body model to improve people sensing and localization with multi-antenna receivers, showing simulation results that compare single- and multi-antenna scenarios.

Device-Free Localization (DFL) employs passive radio techniques capable to detect and locate people without imposing them to wear any electronic device. By exploiting the Integrated Sensing and Communication paradigm, DFL networks employ Radio Frequency (RF) nodes to measure the excess attenuation introduced by the subjects (i.e., human bodies) moving inside the monitored area, and to estimate their positions and movements. Physical, statistical, and ElectroMagnetic (EM) models have been proposed in the literature to estimate the body positions according to the RF signals collected by the nodes. These body models usually employ a single-antenna processing for localization purposes. However, the availability of low-cost multi-antenna devices such as those used for WLAN (Wireless Local Area Network) applications and the timely development of array-based body models, allow us to employ array-based processing techniques in DFL networks. By exploiting a suitable array-capable EM body model, this paper proposes an array-based framework to improve people sensing and localization. In particular, some simulations are proposed and discussed to compare the model results in both single- and multi-antenna scenarios. The proposed framework paves the way for a wider use of multi-antenna devices (e.g., those employed in current IEEE 802.11ac/ax/be and forthcoming IEEE 802.11be networks) and novel beamforming algorithms for DFL scenarios.

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