论文标题
室内定位Wi-Fi指纹数据集的数据清洁数据集
Data Cleansing for Indoor Positioning Wi-Fi Fingerprinting Datasets
论文作者
论文摘要
每年需要定位和本地化服务的可穿戴设备和本地化服务的数量增长。这种快速增长还会产生数百万个数据条目,需要在任何室内定位系统中使用,以确保数据质量并为最终用户提供高质量的服务(QOS)。在本文中,我们为WLAN指纹无线电图提供了一种新颖而直接的数据清洁算法。该算法基于使用接收的信号强度(RSS)值和访问点(APS)标识符之间的指纹之间的相关性。我们使用这些来计算数据集中所有样本之间的相关性,并删除数据集相关水平较低的指纹。我们评估了14个独立公共可用数据集的建议方法。结果,从数据集中除去平均14%的指纹。 2D定位误差将2.7%和3D定位误差降低了5.3%,平均地板命中率略有增加1.2%。因此,平均位置预测速度也增加了14%。
Wearable and IoT devices requiring positioning and localisation services grow in number exponentially every year. This rapid growth also produces millions of data entries that need to be pre-processed prior to being used in any indoor positioning system to ensure the data quality and provide a high Quality of Service (QoS) to the end-user. In this paper, we offer a novel and straightforward data cleansing algorithm for WLAN fingerprinting radio maps. This algorithm is based on the correlation among fingerprints using the Received Signal Strength (RSS) values and the Access Points (APs)'s identifier. We use those to compute the correlation among all samples in the dataset and remove fingerprints with low level of correlation from the dataset. We evaluated the proposed method on 14 independent publicly-available datasets. As a result, an average of 14% of fingerprints were removed from the datasets. The 2D positioning error was reduced by 2.7% and 3D positioning error by 5.3% with a slight increase in the floor hit rate by 1.2% on average. Consequently, the average speed of position prediction was also increased by 14%.