Efficient Sampling Allocation Strategies for General Graph-Filter-Based Signal Recovery
Lital Dabush, Tirza Routtenberg

TL;DR
This paper introduces optimized sampling strategies for graph signal recovery that significantly improve estimation accuracy and reduce sensor requirements by leveraging graph filtering and advanced cost functions.
Contribution
It proposes a novel graph-filtered regularized maximum likelihood estimator and develops efficient algorithms for optimal sensor placement based on multiple cost functions.
Findings
Sampling methods reduce MSE by up to 50% compared to traditional methods.
Algorithms effectively optimize sensor placement with lower computational complexity.
Simulation results validate improved signal recovery in real-world datasets.
Abstract
Sensor placement plays a crucial role in graph signal recovery in underdetermined systems. In this paper, we present the graph-filtered regularized maximum likelihood (GFR-ML) estimator of graph signals, which integrates general graph filtering with regularization to enhance signal recovery performance under a limited number of sensors. Then, we investigate task-based sampling allocation aimed at minimizing the mean squared error (MSE) of the GFR-ML estimator by wisely choosing sensor placement. Since this MSE depends on the unknown graph signals to be estimated, we propose four cost functions for the optimization of the sampling allocation: the biased Cramr-Rao bound (bCRB), the worst-case MSE (WC-MSE), the Bayesian MSE (BMSE), and the worst-case BMSE (WC-BMSE), where the last two assume a Gaussian prior. We investigate the properties of these cost functions and…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Blind Source Separation Techniques
