Opportunistic sensor activation in the face of data deluge

Decision and Control(2013)

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摘要
In this paper, we consider the problem of designing optimal measurement policies for a sensor that acquires sequential compressive measurements of a static vector of unknown sparsity as originally formulated in [3]. The scenario is modeled as a finite horizon sequential decision making problem when the number of samples is strictly restricted to be less than the overall horizon of the problem. We assume that at each instant of time the sensor can decide whether or not to take an observation, based on the quality of the sensing parameters. The objective of the sensor is to minimize the coherence of the final sensing matrix. We provide a closed-loop optimal measurement policy for a low-dimensional problem. We generalize the optimal policy to obtain a feasible policy for acquiring arbitrary length sparse vectors of unknown sparsity. Finally, we illustrate the performance of the proposed policy by providing simulation results.
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关键词
closed loop systems,compressed sensing,decision making,matrix algebra,sensor fusion,arbitrary length sparse vectors,closed-loop optimal measurement policy,compressive sensing,data deluge,finite horizon sequential decision making problem,low-dimensional problem,opportunistic sensor activation,sensing matrix,sequential compressive measurements,unknown sparsity
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