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Learning to Bound: A Generative Cramér-Rao Bound

Hai Victor Habi, Hagit Messer, Yoram Bresler

2023IEEE Transactions on Signal Processing19 citationsDOIOpen Access PDF

Abstract

The Cramér-Rao bound (CRB), a well-known lower bound on the performance of any unbiased parameter estimator, has been used to study a wide variety of problems. However, to obtain the CRB, requires an analytical expression for the likelihood of the measurements given the parameters, or equivalently a precise and explicit statistical model for the data. In many applications, such a model is not available. Instead, this work introduces a novel approach to approximate the CRB using data-driven methods, which removes the requirement for an analytical statistical model. This approach is based on the recent success of deep generative models in modeling complex, high-dimensional distributions. Using a learned normalizing flow model, we model the distribution of the measurements and obtain an approximation of the CRB, which we call Generative Cramér-Rao Bound (GCRB). Numerical experiments on simple problems validate this approach, and experiments on two image processing tasks of image denoising and edge detection with a learned camera noise model demonstrate its power and benefits.

Topics & Concepts

Generative modelEstimatorUpper and lower boundsCramér–Rao boundComputer scienceStatistical modelAlgorithmNoise (video)Estimation theoryArtificial intelligenceImage (mathematics)Generative grammarPattern recognition (psychology)MathematicsApplied mathematicsStatisticsMathematical analysisGenerative Adversarial Networks and Image SynthesisImage and Signal Denoising MethodsModel Reduction and Neural Networks