Abstract
The behavior and
performance of denoising algorithms are governed by one or several parameters,
whose optimal settings depend on the content of the processed image and the
characteristics of the noise, and are generally designed to minimize the mean
squared error (MSE) between the denoised image returned by the algorithm and a
virtual ground truth. In this paper, we introduce a new Poisson-Gaussian
unblased risk estimator (PG-URE) of the MSE applicable to a mixed Poisson-Gaussian
noise model that unifies the widely used Gaussian and Poisson noise model in
fluorescence bioimaging applications. We propose a stochastic methodology to
evaluate this estimator in the case when little is known about the internal
machinery of the considered denoising algorithm, and we analyze both
theoretically and empirically the characteristics of the PG-URE estimator.
Finally, we evaluate the PG-URE-driven parametrization for three standard
denoising algorithms, with and without variance stabilizing tranforms, and
different characteristics of the Poisson-Gaussian noise mixture.
Domain : Image Processing
Contact Details
Ph.no : 7200555526
e-mail id : info.nanosoftwares@gmail.com
No comments:
Post a Comment