Robust RSSI-based Indoor Positioning System using K-means Clustering and Bayesian Estimation

dc.contributor.advisor1Oliveira, Horácio Antonio Braga Fernandes de
dc.contributor.advisor1Latteshttp://lattes.cnpq.br/9314744999783676por
dc.contributor.referee1Pazzi, Richard Werner
dc.contributor.referee1Lattes*por
dc.contributor.referee1orcidhttps://orcid.org/0000-0003-4308-6265por
dc.contributor.referee2Barreto, Raimundo da Silva
dc.contributor.referee2Latteshttp://lattes.cnpq.br/1132672107627968por
dc.creatorPinto, Bráulio Henrique Orion Uchôa Veloso
dc.creator.Latteshttp://lattes.cnpq.br/2044598311458637por
dc.creator.orcidhttps://orcid.org/0000-0001-8885-5609por
dc.date.issued2021-07-22
dc.description.abstractThis work proposes a new indoor positioning system, named KLIP, that uses the K-means clustering algorithm to split the environment into different sets of log-distance propagation models in order to better characterize the indoor environment and further improve the position estimation using Bayesian inference. The proposed method is validated in a large-scale, real-world scenario composed of Bluetooth Low Energy (BLE)-based devices. It is demonstrated, throughout the work, that the addition of location information of training points to the received signal strength indicator (RSSI) as an attribute for the clustering step improves the positioning accuracy. Moreover, the obtained results show that the solution outperforms the naive Bayesian estimation up to 12% – regarding the positioning accuracy – and the broadly deployed kNN for reduced training dataset size – regarding both accuracy and online processing time. In this sense, KLIP proves to be an efficient and scalable alternative when both site-survey effort and energy consumption constraints must be taken into account.eng
dc.description.resumoThis work proposes a new indoor positioning system, named KLIP, that uses the K-means clustering algorithm to split the environment into different sets of log-distance propagation models in order to better characterize the indoor environment and further improve the position estimation using Bayesian inference. The proposed method is validated in a large-scale, real-world scenario composed of Bluetooth Low Energy (BLE)-based devices. It is demonstrated, throughout the work, that the addition of location information of training points to the received signal strength indicator (RSSI) as an attribute for the clustering step improves the positioning accuracy. Moreover, the obtained results show that the solution outperforms the naive Bayesian estimation up to 12% – regarding the positioning accuracy – and the broadly deployed kNN for reduced training dataset size – regarding both accuracy and online processing time. In this sense, KLIP proves to be an efficient and scalable alternative when both site-survey effort and energy consumption constraints must be taken into account.por
dc.description.sponsorshipFAPEAM - Fundação de Amparo à Pesquisa do Estado do Amazonaspor
dc.description.sponsorshipCAPES - Coordenação de Aperfeiçoamento de Pessoal de Nível Superiorpor
dc.formatapplication/pdf*
dc.identifier.citationPINTO, Bráulio Henrique Orion Uchôa Veloso. Robust RSSI-based indoor positioning system using k-means clustering and Bayesian estimation. 2021. 40 f. Dissertação (Mestrado em Informática) - Universidade Federal do Amazonas, Manaus, 2021.por
dc.identifier.urihttps://tede.ufam.edu.br/handle/tede/8374
dc.languageengpor
dc.publisherUniversidade Federal do Amazonaspor
dc.publisher.countryBrasilpor
dc.publisher.departmentInstituto de Computaçãopor
dc.publisher.initialsUFAMpor
dc.publisher.programPrograma de Pós-graduação em Informáticapor
dc.rightsAcesso Abertopor
dc.subjectSistema de posicionamento internopor
dc.subjectInferência bayesianapor
dc.subjectBluetooth Low Energyeng
dc.subjectSistema KLIPpor
dc.subjectBanco de dados de impressão digitalpor
dc.subject.cnpqCIÊNCIAS EXATAS E DA TERRApor
dc.subject.userBayesian estimationeng
dc.subject.userIndoor positioningeng
dc.subject.userK-means clusteringeng
dc.subject.userLog-distance path loss modeleng
dc.subject.userRssieng
dc.thumbnail.urlhttps://tede.ufam.edu.br//retrieve/47683/Disserta%c3%a7%c3%a3o_BraulioHenrique_PPGI.pdf.jpg*
dc.titleRobust RSSI-based Indoor Positioning System using K-means Clustering and Bayesian Estimationpor
dc.title.alternativeSistema Robusto de Localização Interna usando Agrupamento K-means e Estimativa Bayesianapor
dc.typeDissertaçãopor

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