Naïve Bayes Classifier for Indoor Positioning using Bluetooth Low Energy

Dzata Farahiyah, Rifky Mukti Romadhoni, Setyawan Wahyu Pratomo
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引用次数: 2

Abstract

Indoor localization becomes more popular along with the rapid growth of technology dan information system. The research has been conducted in many areas, especially in algorithm. Based on the need for knowledge of training data, Fingerprinting algorithm is categorized as the one that works with it. Training data is then computed with the machine learning approach, Naïve Bayes. Naïve Bayes is a simple and efficient classifier to estimate location. This study conducted an experiment with Naïve Bayes in order to classify unknown location of object based on the signal strength of Bluetooth low energy. It required 2 processes, collecting training data and evaluating test data. The result of the analysis with Naïve Bayes showed that the algorithm works well to estimate the right position of an object regarding its class.
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Naïve基于低功耗蓝牙的室内定位贝叶斯分类器
随着技术和信息系统的快速发展,室内定位越来越受欢迎。这方面的研究已经在很多领域展开,尤其是在算法方面。基于对训练数据知识的需求,指纹识别算法被分类为与训练数据相关的算法。然后用机器学习方法(Naïve Bayes)计算训练数据。Naïve贝叶斯是一种简单有效的位置估计分类器。本研究利用Naïve Bayes进行实验,基于蓝牙低功耗信号强度对未知物体位置进行分类。它需要2个过程,收集培训数据和评估测试数据。通过Naïve Bayes的分析结果表明,该算法可以很好地估计对象在其类别中的正确位置。
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