Title of article :
Robust Estimation Approach for Blind Denoising
Author/Authors :
T. Rabie، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
This work develops a new robust statistical framework
for blind image denoising. Robust statistics addresses the
problem of estimation when the idealized assumptions about a
system are occasionally violated. The contaminating noise in an
image is considered as a violation of the assumption of spatial coherence
of the image intensities and is treated as an outlier random
variable. A denoised image is estimated by fitting a spatially coherent
stationary image model to the available noisy data using a
robust estimator-based regression method within an optimal-size
adaptive window. The robust formulation aims at eliminating the
noise outliers while preserving the edge structures in the restored
image. Several examples demonstrating the effectiveness of this
robust denoising technique are reported and a comparison with
other standard denoising filters is presented.
Keywords :
robust statistics. , Blind denoising , Gaussian noise filtering , imagerestoration , OUTLIERS , robust denoising , redescending estimators
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING