Robust Localization from Incomplete Local Information
Amin Karbasi, Sewoong Oh

TL;DR
This paper analyzes the accuracy of centralized and distributed localization algorithms in wireless networks with incomplete, probabilistic connectivity information, providing bounds on localization error based on network parameters.
Contribution
It offers the first theoretical error bounds for localization algorithms under extreme incomplete and probabilistic connectivity conditions in wireless networks.
Findings
Error decreases proportionally to R/Rc, where Rc is the critical detection range.
Provides bounds on localization error for both centralized and distributed algorithms.
Shows performance guarantees in networks with probabilistic detection failures.
Abstract
We consider the problem of localizing wireless devices in an ad-hoc network embedded in a d-dimensional Euclidean space. Obtaining a good estimation of where wireless devices are located is crucial in wireless network applications including environment monitoring, geographic routing and topology control. When the positions of the devices are unknown and only local distance information is given, we need to infer the positions from these local distance measurements. This problem is particularly challenging when we only have access to measurements that have limited accuracy and are incomplete. We consider the extreme case of this limitation on the available information, namely only the connectivity information is available, i.e., we only know whether a pair of nodes is within a fixed detection range of each other or not, and no information is known about how far apart they are. Further, to…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Distributed Sensor Networks and Detection Algorithms · Energy Efficient Wireless Sensor Networks
