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MDS-based localization with known anchor locations and missing tag-to-tag distances

机译:具有已知锚点位置和缺少标签到标签的距离的基于MDS的本地化

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Multidimensional Scaling (MDS) can be used to localize a set of nodes (tags) by evaluating their distances from another set of nodes having known location (anchors). Node localization with MDS generally requires that the proximity graph be fully connected. This implies that matrices generated from tag-anchor ranging for which tag-to-tag distances are missing can not be used directly with the MDS algorithm without the use of estimates for the missing data. These estimates, however, unavoidably introduce some approximations in the localization process, which can become relatively large depending on the number of missing measurements and the amount of noise in the pair-wise distance measurements. This paper proposes a specialized form of the anchored MDS algorithm that undermines missing tag-to-tag distances in the connectivity matrix. We show that decoupling tag-to-tag interactions in the Scaling by MAjorizing a COmplicated Function (SMACOF) algorithm can undermine the effects of missing tag-to-tag distances and produce tag configurations that are inferred directly from only anchor-tag pairwise distances.
机译:多维缩放(MDS)可用于通过评估节点与具有已知位置的另一组节点(锚)的距离来定位一组节点(标签)。使用MDS进行节点本地化通常需要将接近图完全连接。这意味着从标签锚到标签距离丢失的标签锚定距生成的矩阵不能直接与MDS算法一起使用,而无需使用丢失数据的估计值。但是,这些估计不可避免地会在定位过程中引入一些近似值,这些近似值可能会因丢失的测量数量和成对距离测量中的噪声量而变得相对较大。本文提出了一种锚定MDS算法的特殊形式,该算法可破坏连通性矩阵中丢失的标签到标签的距离。我们显示,通过主要使用一个有关联函数(SMACOF)算法,在缩放中将标签与标签之间的相互作用解耦可以破坏丢失的标签与标签之间的距离的影响,并产生仅从锚-标签对距离直接推断出的标签配置。

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