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Estimation and Fusion for Tracking Over Long-Haul Links Using Artificial Neural Networks...

by Qiang Liu, Katharine Brigham, Nageswara S Rao
Publication Type
Journal
Journal Name
IEEE Transactions on Signal and Information Processing over Networks
Publication Date
Page Numbers
1 to 1
Volume
3
Issue
4

In a long-haul sensor network, sensors are remotely deployed over a large geographical area to perform certain tasks, such as tracking and/or monitoring of one or more dynamic targets. A remote fusion center fuses the information provided by these sensors so that a final estimate of certain target characteristics – such as the position – is expected to possess much improved quality. In this work, we pursue learning-based approaches for estimation and fusion of target states in long-haul sensor networks. In particular, we consider learning based on various implementations of artificial neural networks (ANNs). The joint effect of (i) imperfect communication condition, namely, link-level loss and delay, and (ii) computation constraints, in the form of low-quality sensor estimates, on ANN-based estimation and fusion, is investigated by means of analytical and simulation studies.