In image reconstruction and restoration, there exists an inherent tradeoff between the recovered spatial resolution and statistical variance: lower variance can be bought at the price of decreased spatial resolution. This tradeoff can be captured for a particular regularized estimator by tracing out the resolution and variance as a curve indexed by the estimator’s smoothing parameter. When the resolution of an estimator is well characterized by the norm of the estimator bias-gradient the uniform Cramèr-Rao (CR) lower bound can be applied. The bias-gradient norm fails, however, to constrain the width of the estimator point response function and the uniform CR bound with bias-gradient norm can give counter-intuitive results. In this paper we ...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...
Abstract: Sample statistics from a multi-frame blind-deconvolution (MFBD) algorithm are compared wi...
Since image reconstruction and restoration are ill-posed problems, unbiased estimators often have un...
The authors apply a uniform Cramer-Rao (CR) bound (A.O. Hero, 1992) to study the bias-variance trade...
We apply a uniform Cramer-Rao (CR) bound [1] to study the bias-variance trade-offs in single photon ...
We apply a uniform Cramer-Rao (CR) bound to study the bias-variance trade-offs in parameter estimati...
The authors quantify fundamental bias-variance tradeoffs for the image reconstruction problem in rad...
In most parametric estimation problems there exists a trade-off between bias and variance of the est...
Abstract—This paper presents a modified Uniform Cramer–Rao bound (UCRB) for studying estimator spati...
We introduce a plane, which we call the delta-sigma plane, that is indexed by the norm of the estima...
We introduce a plane, which we call the delta-sigma plane, that is indexed by the norm of the estima...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...
As many image restoration techniques are continuing to be developed, it is increasingly difficult to...
We give a class of iterative algorithms to monotonically approximate submatrices of the CR matrix bo...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...
Abstract: Sample statistics from a multi-frame blind-deconvolution (MFBD) algorithm are compared wi...
Since image reconstruction and restoration are ill-posed problems, unbiased estimators often have un...
The authors apply a uniform Cramer-Rao (CR) bound (A.O. Hero, 1992) to study the bias-variance trade...
We apply a uniform Cramer-Rao (CR) bound [1] to study the bias-variance trade-offs in single photon ...
We apply a uniform Cramer-Rao (CR) bound to study the bias-variance trade-offs in parameter estimati...
The authors quantify fundamental bias-variance tradeoffs for the image reconstruction problem in rad...
In most parametric estimation problems there exists a trade-off between bias and variance of the est...
Abstract—This paper presents a modified Uniform Cramer–Rao bound (UCRB) for studying estimator spati...
We introduce a plane, which we call the delta-sigma plane, that is indexed by the norm of the estima...
We introduce a plane, which we call the delta-sigma plane, that is indexed by the norm of the estima...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...
As many image restoration techniques are continuing to be developed, it is increasingly difficult to...
We give a class of iterative algorithms to monotonically approximate submatrices of the CR matrix bo...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...
Abstract: Sample statistics from a multi-frame blind-deconvolution (MFBD) algorithm are compared wi...