A Theoretical Framework For Problems Requiring Robust Behavior

Computational Advances in Multi-Sensor Adaptive Processing(2009)

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摘要
This paper develops a generalized Cauchy density (GCD) based theoretical approach that allows the formulation of challenging problems in a robust fashion. The proposed framework subsumes the generalized Gaussian distribution (GGD) family based developments, thereby guaranteeing performance improvements over traditional problem formulation techniques. This robust framework can be adapted to a variety of applications in signal processing. We formulate two particular applications under this framework in this paper: 1) Robust reconstruction methods for compressed sensing and 2) robust estimation in sensor networks with noisy channels.
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关键词
Maximum likelihood estimation,nonlinear filtering and estimation,impulsive noise,compressed sensing,sensor networks
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