Enabling Accurate Indoor Localization Using a Machine Learning Algorithm
In this paper, fingerprint referencing methods based on wireless fidelity Wi-Fi received signal strength (RSS) have used for indoor positioning. More precisely, Naïve Bayes, decision tree (DT), and support vector machine (SVM) one-to-one multi-classes and error-correcting-output-codes classifier are...
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doaj-2134add3d02f4cf9b15ce5db63160f972020-11-25T03:28:57ZengUniversity of Human DevelopmentUHD Journal of Science and Technology2521-42092521-42172020-06-014196102https://doi.org/10.21928/uhdjst.v4n1y2020.pp96-102Enabling Accurate Indoor Localization Using a Machine Learning AlgorithmHaidar Abdulrahman Abbas0Kayhan Zrar Ghafoor1Department of Computer¸ College of Science, University of Sulaimani, Sulaymaniyah, IraqDepartment of Software Engineering, University of Salahaddin, Erbil, IraqIn this paper, fingerprint referencing methods based on wireless fidelity Wi-Fi received signal strength (RSS) have used for indoor positioning. More precisely, Naïve Bayes, decision tree (DT), and support vector machine (SVM) one-to-one multi-classes and error-correcting-output-codes classifier are to enable accurate indoor positioning. Then, normalization is used to reduce positioning error by reducing the fluctuation and diverse distribution of the RSS values. Different devices are used in this experiment; the training dataset is not included in the main dataset. Nonetheless, the learned model by the SVM algorithm cannot be affected by the elimination of train datasets of the test device. The efficiency of DT is lower than the other machine learning algorithms, because it performs by Boolean function, and it provides the low accuracy of prediction for dataset than the algorithms. Naïve Bayes technique based on Bayes Theorem is better than DT and close to SVM for positioning approves that 1–1.5 m positioning accuracy for indoor environments can be achieved by the proposed approach which is an excellent result than traditional protocol. http://journals.uhd.edu.iq/index.php/uhdjst/article/view/741/546received signal strengthwireless access pointswireless fidelity fingerprintingindoor localizationdecision treenaïve bayessupport vector machine |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Haidar Abdulrahman Abbas Kayhan Zrar Ghafoor |
spellingShingle |
Haidar Abdulrahman Abbas Kayhan Zrar Ghafoor Enabling Accurate Indoor Localization Using a Machine Learning Algorithm UHD Journal of Science and Technology received signal strength wireless access points wireless fidelity fingerprinting indoor localization decision tree naïve bayes support vector machine |
author_facet |
Haidar Abdulrahman Abbas Kayhan Zrar Ghafoor |
author_sort |
Haidar Abdulrahman Abbas |
title |
Enabling Accurate Indoor Localization Using a Machine Learning Algorithm |
title_short |
Enabling Accurate Indoor Localization Using a Machine Learning Algorithm |
title_full |
Enabling Accurate Indoor Localization Using a Machine Learning Algorithm |
title_fullStr |
Enabling Accurate Indoor Localization Using a Machine Learning Algorithm |
title_full_unstemmed |
Enabling Accurate Indoor Localization Using a Machine Learning Algorithm |
title_sort |
enabling accurate indoor localization using a machine learning algorithm |
publisher |
University of Human Development |
series |
UHD Journal of Science and Technology |
issn |
2521-4209 2521-4217 |
publishDate |
2020-06-01 |
description |
In this paper, fingerprint referencing methods based on wireless fidelity Wi-Fi received signal strength (RSS) have used for indoor positioning. More precisely, Naïve Bayes, decision tree (DT), and support vector machine (SVM) one-to-one multi-classes and error-correcting-output-codes classifier are to enable accurate indoor positioning. Then, normalization is used to reduce positioning error by reducing the fluctuation and diverse distribution of the RSS values. Different devices are used in this experiment; the training dataset is not included in the main dataset. Nonetheless, the learned model by the SVM algorithm cannot be affected by the elimination of train datasets of the test device. The efficiency of DT is lower than the other machine learning algorithms, because it performs by Boolean function, and it provides the low accuracy of prediction for dataset than the algorithms. Naïve Bayes technique based on Bayes Theorem is better than DT and close to SVM for positioning approves that 1–1.5 m positioning accuracy for indoor environments can be achieved by the proposed approach which is an excellent result than traditional protocol.
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topic |
received signal strength wireless access points wireless fidelity fingerprinting indoor localization decision tree naïve bayes support vector machine |
url |
http://journals.uhd.edu.iq/index.php/uhdjst/article/view/741/546 |
work_keys_str_mv |
AT haidarabdulrahmanabbas enablingaccurateindoorlocalizationusingamachinelearningalgorithm AT kayhanzrarghafoor enablingaccurateindoorlocalizationusingamachinelearningalgorithm |
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