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Feature selection on database optimization for Wi-Fi fingerprint indoor positioning

机译:Wi-Fi指纹室内定位的数据库优化功能选择

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摘要

Indoor location-based services have become very popular, principally, because of its wide and valuable applications. On that context, Wi-fi fingerprinting based on the received signal strength indicator (RSSI) has become very popular, due the fact that RSSI values are easily acquired. On the Wi-fi fingerprint method, machine learning algorithms are trained on the constructed fingerprint database and then used on a new entry to give the indoor location based on its estimations. Choosing the correct machine learning algorithm is one of the main problems in the literature. However the database sizes used during the training phase is also one of the main concerns. In this paper, a proposed feature selection method used on the original UJIIndoorLoc database created a smaller version of it, with the 30 highest RSSIs after the APIDs responsible for then in descending order, and created even smaller database subsets. Both databases, the original UJIIndoor Loc database and ours, were split into smaller subsets that were used on the classification problem according the DESIP method proposed in [1]. Six machine learning algorithms were deployed for training and testing the two database subsets with the classification attributes modified for symbolic localization. The J48 with the AdaBoost iterative algorithm gave the best results on both database subsets. The minimized database subsets showed smaller elapsed time results for all the classifications that were done. The accuracy results show similar results for both database subsets, on building and floor classification. Although, on the region attribute, the database subset with 520 attributes got better accuracy results than the reduced one.
机译:室内基于位置的服务已经变得非常流行,主要是因为其广泛且有价值的应用。在这种情况下,基于RSSI值易于获取的事实,基于接收信号强度指示器(RSSI)的Wi-fi指纹识别已变得非常流行。在Wi-fi指纹方法上,机器学习算法在构造的指纹数据库上进行训练,然后在新条目上使用,以基于其估计值给出室内位置。选择正确的机器学习算法是文献中的主要问题之一。但是,在培训阶段使用的数据库大小也是主要问题之一。在本文中,一种在原始UJIIndoorLoc数据库上使用的拟议特征选择方法创建了一个较小的版本,在APID负责之后,其降序排列后的RSSI值最高,排在前30位,并创建了更小的数据库子集。这两个数据库(原始的UJIIndoor Loc数据库和我们的数据库)都被分成较小的子集,这些子集根据文献[1]中提出的DESIP方法用于分类问题。部署了六种机器学习算法,用于训练和测试两个数据库子集,并针对符号定位修改了分类属性。带有AdaBoost迭代算法的J48在两个数据库子集上均提供了最佳结果。对于已完成的所有分类,最小化的数据库子集显示的经过时间较小。对于建筑物和楼层分类,两个数据库子集的准确性结果都显示出相似的结果。尽管在区域属性上,具有520个属性的数据库子集比精简结果具有更好的准确性结果。

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