Skip to main content
Electronics LettersVolume 49, Issue 22, 24 October 2013, Pages 1386-1388

Device-free indoor human presence detection method based on the information entropy of RSSI variations(Article)(Open Access)

  Save all to author list
  • aInstitute for Computer Based Systems, Narodnog fronta 23a, 21000 Novi Sad, Serbia
  • bFaculty of Technical Sciences, University of Novi Sad, Trg Dositeja Obradovica 6, 21000 Novi Sad, Serbia

Abstract

At microwave frequencies, absorption by molecular resonance is a major factor affecting radio propagation. Irregularities in the radio propagation pattern, expressed in a form of the received signal strength indicator's (RSSI) variations, can indicate the possible presence of a human within the radio network. The proposed human presence detection method is based on the information entropy calculated over a set of principal components extracted from a sequence of RSSI samples incrementally, without estimating the covariance matrix. By applying the entropy algorithm, the information on human presence is quantified from the sequence of principal components. It is shown that throughthe- wall human activities, which introduce disturbances in the RSSI footprint of the monitoring room, do not affect the detection accuracy of the method. Experimental results obtained for the 2.4 GHz indoor radio network assess the feasibility of the proposed approach. © The Institution of Engineering and Technology 2013.

Indexed keywords

Engineering uncontrolled termsDetection accuracyEntropy algorithmsInformation entropyMolecular resonancesPresence detectionsPrincipal ComponentsPropagation patternReceived signal strength indicators
Engineering controlled terms:Covariance matrixRadio waves
Engineering main heading:Wave propagation
  • ISSN: 00135194
  • CODEN: ELLEA
  • Source Type: Journal
  • Original language: English
  • DOI: 10.1049/el.2013.1041
  • Document Type: Article

  Institute for Computer Based Systems, Narodnog fronta 23a, Serbia
© Copyright 2013 Elsevier B.V., All rights reserved.

Cited by 14 documents

Styła, M. , Adamkiewicz, P. , Cieplak, T.
A smart building resource prediction, navigation and management system supported by radio tomography and computational intelligence
(2021) Energies
Puurunen, L. , Chaudhary, J. , Kanth, R.
Human Presence Detection with Thermal Sensor using Multilayer Perceptron Algorithm
(2021) 7th IEEE World Forum on Internet of Things, WF-IoT 2021
Zhang, R. , Jing, X. , Wu, S.
Device-Free Wireless Sensing for Human Detection: The Deep Learning Perspective
(2021) IEEE Internet of Things Journal
View details of all 14 citations
{"topic":{"name":"Wireless Sensor Network; Received Signal Strength; Compressed Sensing","id":30556,"uri":"Topic/30556","prominencePercentile":81.04071,"prominencePercentileString":"81.041","overallScholarlyOutput":0},"dig":"d531798b618714447b4175dbc8ab0b04f8bcd0180f35872c50175d76d0292fc4"}

SciVal Topic Prominence

Topic:
Prominence percentile: