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Autori principali: Jukić, Dario, Domazet, Silvije, Ivanko, Ante, Raca, David, Nikolić, Siniša, Knežević, Marin, Jović, Filip, Raca, Nenad, Buljan, Hrvoje
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2308.06773
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author Jukić, Dario
Domazet, Silvije
Ivanko, Ante
Raca, David
Nikolić, Siniša
Knežević, Marin
Jović, Filip
Raca, Nenad
Buljan, Hrvoje
author_facet Jukić, Dario
Domazet, Silvije
Ivanko, Ante
Raca, David
Nikolić, Siniša
Knežević, Marin
Jović, Filip
Raca, Nenad
Buljan, Hrvoje
contents We present experimental results and theoretical methods for the precise determination of the presence and the number of persons in an observed area by using Wi-Fi signals. Our setup does not require active cooperation of persons present in the Wi-Fi field, and relies only on the Received Signal Strength Indicator (RSSI), which is read by the detectors. We first show that the standard deviation of the measured RSSI data can be used as a practical tool to establish the presence of a person (or more persons) with high precision, in particular when the signal source is inside the measurement room. For the more difficult problem of counting the number of persons, we have employed machine learning algorithms to analyze data collected on nine different detectors and up to nine people present in our experiment. We have achieved excellent results (prediction accuracy of $98 \%$ and above) for counting already with only few detectors utilized in the analysis. While generalizations to nontrivial indoor geometries (such as odd shapes, more rooms, and greater size) may be of interest in some applications, where additional care with respect to positioning od detectors can be needed (or even placing additional detectors), this approach may be useful due to its conceptual practicality and solid prediction results.
format Preprint
id arxiv_https___arxiv_org_abs_2308_06773
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Detection of presence and number of persons by a Wi-Fi signal: a practical RSSI-based approach
Jukić, Dario
Domazet, Silvije
Ivanko, Ante
Raca, David
Nikolić, Siniša
Knežević, Marin
Jović, Filip
Raca, Nenad
Buljan, Hrvoje
Signal Processing
We present experimental results and theoretical methods for the precise determination of the presence and the number of persons in an observed area by using Wi-Fi signals. Our setup does not require active cooperation of persons present in the Wi-Fi field, and relies only on the Received Signal Strength Indicator (RSSI), which is read by the detectors. We first show that the standard deviation of the measured RSSI data can be used as a practical tool to establish the presence of a person (or more persons) with high precision, in particular when the signal source is inside the measurement room. For the more difficult problem of counting the number of persons, we have employed machine learning algorithms to analyze data collected on nine different detectors and up to nine people present in our experiment. We have achieved excellent results (prediction accuracy of $98 \%$ and above) for counting already with only few detectors utilized in the analysis. While generalizations to nontrivial indoor geometries (such as odd shapes, more rooms, and greater size) may be of interest in some applications, where additional care with respect to positioning od detectors can be needed (or even placing additional detectors), this approach may be useful due to its conceptual practicality and solid prediction results.
title Detection of presence and number of persons by a Wi-Fi signal: a practical RSSI-based approach
topic Signal Processing
url https://arxiv.org/abs/2308.06773