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A probabilistic approach to outdoor localization using clustering and principal component transformations

机译:使用聚类和主成分变换的概率性户外定位方法

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A probabilistic approach for outdoor location estimation using GSM received signal strength (RSS) from base stations (BSs) is presented. The proposed approach first divides the region of interest into different clusters based on deviations from the path loss model for each RSS component. In each cluster, the proposed algorithm uses principal component analysis (PCA) to intelligently transform RSS into new uncorrelated dimensions. This retains accuracy by not losing the substantial RSS correlations in each cluster, but also accommodates the different RSS distributions in each cluster. Our experiments are conducted in a real GSM outdoor environment. The proposed approach is compared with a traditional probabilistic algorithm for three different area partitioning methods. The experimental results show that the positioning accuracy is significantly improved and our clustering scheme gives good support for location estimation. Furthermore, it also can be concluded that the clustering scheme created by using deviation RSS based on Mahalanobis distance performs better than that using deviation based on Euclidean distance in a complex environment. What's more, the proposed method can reduce the number of training data used while maintaining the accuracy required.
机译:提出了一种使用来自基站(BS)的GSM接收信号强度(RSS)进行户外位置估计的概率方法。所提出的方法首先基于与每个RSS组件的路径损耗模型之间的偏差,将关注区域划分为不同的群集。在每个聚类中,所提出的算法均使用主成分分析(PCA)将RSS智能地转换为新的不相关维度。这样就不会丢失每个群集中的大量RSS相关性,从而保持了准确性,而且还可以容纳每个群集中不同的RSS分布。我们的实验是在真实的GSM户外环境中进行的。将该方法与传统的概率算法进行了三种不同区域划分方法的比较。实验结果表明,该算法的定位精度得到了显着提高,我们的聚类方案为位置估计提供了良好的支持。此外,还可以得出结论,在复杂环境中,使用基于马氏距离的偏差RSS创建的聚类方案比使用基于欧氏距离的偏差创建的聚类方案更好。此外,所提出的方法可以减少使用的训练数据的数量,同时保持所需的准确性。

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