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Reduce Redundancies: Signal-based Clustering of Large-scale Fingerprint Data

机译:减少冗余:基于信号的大规模指纹数据群集

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摘要

For Bluetooth- or WIFI-based localization, fingerprinting data plays an important role. Mobile devices compare their received signals with recorded signals on a map (so-called reference points) and derive their most like location from that. Obviously, this method requires an elaborate offline phase to record the reference points. If this data set is too small and not dense enough, the localization accuracy is low, too. However, by just increasing the number of recorded data points, storage and comparison costs on the mobile device are also increased. Hence, the goal of this work is to find the best reference points within large-scale sets of fingerprinting data based on clustering. We present different novel algorithms for signal-based clustering and compare them with existing work. An extensive evaluation on real-world data sets shows that our approach can reduce the data set size up to 90% while keeping a mean accuracy of 1.0m in the experiments in the real world.
机译:对于基于蓝牙或WiFi的本地化,指纹数据起着重要作用。移动设备将其接收信号与拍摄信号(所谓的参考点)上的录制信号进行比较,并从中导出它们最喜欢的位置。显然,该方法需要详细的离线阶段来记录参考点。如果此数据集太小而且不够密集,则本地化精度也很低。然而,通过增加记录的数据点的数量,移动设备上的存储和比较成本也增加。因此,这项工作的目标是在基于聚类的基于群集的大规模指纹数据集中找到最佳参考点。我们为基于信号的群集提供了不同的新颖算法,并将它们与现有工作进行比较。对现实世界数据集的广泛评估表明,我们的方法可以将数据集大小降低至90%,同时保持现实世界中的实验中的平均准确性1.0米。

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