OCSYSYNov 9, 2017

On a registration-based approach to sensor network localization

arXiv:1707.0286621 citationsh-index: 26
Originality Incremental advance
AI Analysis

For researchers in sensor networks, this work offers an efficient localization method with improved scalability, though it is incremental over existing registration techniques.

The paper proposes a registration-based approach for sensor network localization from range measurements, transforming the problem into registering overlapping cliques. It demonstrates favorable run-time, accuracy, and scalability compared to state-of-the-art methods.

We consider a registration-based approach for localizing sensor networks from range measurements. This is based on the assumption that one can find overlapping cliques spanning the network. That is, for each sensor, one can identify geometric neighbors for which all inter-sensor ranges are known. Such cliques can be efficiently localized using multidimensional scaling. However, since each clique is localized in some local coordinate system, we are required to register them in a global coordinate system. In other words, our approach is based on transforming the localization problem into a problem of registration. In this context, the main contributions are as follows. First, we describe an efficient method for partitioning the network into overlapping cliques. Second, we study the problem of registering the localized cliques, and formulate a necessary rigidity condition for uniquely recovering the global sensor coordinates. In particular, we present a method for efficiently testing rigidity, and a proposal for augmenting the partitioned network to enforce rigidity. A recently proposed semidefinite relaxation of global registration is used for registering the cliques. We present simulation results on random and structured sensor networks to demonstrate that the proposed method compares favourably with state-of-the-art methods in terms of run-time, accuracy, and scalability.

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