首页> 外文会议>2016 6th International Conference - Cloud System and Big Data Engineering (Confluence) >Wi-Fi Fingerprint localisation using Density-based Clustering for public spaces: A case study in a shopping mall
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Wi-Fi Fingerprint localisation using Density-based Clustering for public spaces: A case study in a shopping mall

机译:使用基于密度的群集进行公共场所的Wi-Fi指纹本地化:一个购物中心的案例研究

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Indoor localisation is to-date still an active research area. This paper presents a case study on a localisation technique using Wi-Fi fingerprints built from radio information collected using commercially-off-the-shelf smartphones. The Wi-Fi fingerprints are built using density-based clustering-based algorithms. The investigation is carried out on normal operation scenarios, where a normal crowd was present during the experiments. A simplified version of the clustering algorithm, the Simplified Fingerprint Density-based Clustering Algorithm (SFDCA), is proposed, implemented as well as evaluated with a comparison to an existing indoor localisation algorithm called Density-based Cluster Combined Algorithm (DCCLA). Furthermore, a few changes are proposed and evaluated for the recognition algorithm. This paper discusses the obtained results, observations and issues faced in the case study.
机译:迄今为止,室内本地化仍然是活跃的研究领域。本文介绍了一个案例研究,该案例使用Wi-Fi指纹进行定位,该指纹是通过使用现成的智能手机收集的无线电信息构建的。 Wi-Fi指纹使用基于密度的聚类算法构建。调查是在实验期间出现正常人群的正常操作场景下进行的。提出了一种简化版本的聚类算法,即基于指纹密度的简化聚类算法(SFDCA),并与现有的室内基于密度的聚类组合算法(DCCLA)进行室内定位比较。此外,对识别算法提出了一些更改并进行了评估。本文讨论了案例研究中获得的结果,观察结果和面临的问题。

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