Top-P Sensor Selection for Target Localization
Abstract
We study set-valued decision rules in which performance is defined by the inclusion of the top-p hypotheses, rather than only the single best or true hypothesis. This criterion is motivated by sensor selection for target tracking, where inexpensive measurements are used to identify a list of sensor nodes that are likely to be closest to a target. We analyze the performance of top-p versus top-1 selection under sequential hypothesis testing, propose a geometry-aware sensor selection algorithm, and validate the approach using real testbed data.
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