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Feature Analysis in Indoor Positioning

机译:室内定位特征分析

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摘要

In order to satisfy the higher precision of indoor location-based service (ILBS), scholars have explored a great deal of algorithms based on Wi-Fi, ultrasonic, RFID or infrared, but all of which need additional device settings for transmitting and receiving signals before implementing location recognition. This paper proposed an idea that how to conveniently find the optimal feature or composite features for more accurate indoor positioning, which were achieved by classification and clustering algorithms integrated in WEKA software. All the samples on five features were collected only with the help of a smart-phone lasted for 15 days. Comprehensive experiments, comparative studies with different kinds of samples, and the correlative performance evaluations were also completed. The results proved that our proposed schema was rational: the optimal feature, combinatory features and the corresponding statistical index of samples can be selected by classification and clustering for location recognition.
机译:为了满足室内位置的服务(ILBS)的更高精度,学者们已经探索了基于Wi-Fi,超声波,RFID或红外线的大量算法,但所有这些都需要额外的设备设置来发送和接收信号在实施位置识别之前。本文提出了一种想法,如何方便地找到更准确的室内定位的最佳特征或复合特征,这是通过在Weka软件中集成的分类和聚类算法实现的。在智能手机持续15天的帮助下,仅收集五个功能的所有样本。综合实验,不同种类样品的比较研究,以及相关性能评估也完成。结果证明,我们提出的模式是合理的:可以通过分类和聚类来选择最佳特征,组合特征和相应的样本统计指标进行位置识别。

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