Conference Papers

Distributed, simple and stable network localization

Abstract:
We propose a simple, stable and distributed algo- rithm which directly optimizes the nonconvex maximum likeli- hood criterion for sensor network localization, with no need to tune any free parameter. We reformulate the problem to obtain a gradient Lipschitz cost; by shifting to this cost function we enable a Majorization-Minimization (MM) approach based on quadratic upper bounds that decouple across nodes; the resulting algorithm happens to be distributed, with all nodes working in parallel. Our method inherits the MM stability: each communication cuts down the cost function. Numerical simulations indicate that the proposed approach tops the performance of the state of the art algorithm, both in accuracy and communication cost.
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URL:
http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=7032222&tag=1

Proc. of GlobalSIP - IEEE Global Conference on Signal and Information Processing, Atlanta, Georgia, USA