Title of article :
A Soft Double Regularization Approach to Parametric Blind Image Deconvolution
Author/Authors :
L. Chen and K.-H. Yap، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
This paper proposes a blind image deconvolution
scheme based on soft integration of parametric blur structures.
Conventional blind image deconvolution methods encounter a
difficult dilemma of either imposing stringent and inflexible
preconditions on the problem formulation or experiencing poor
restoration results due to lack of information. This paper attempts
to address this issue by assessing the relevance of parametric blur
information, and incorporating the knowledge into the parametric
double regularization (PDR) scheme. The PDR method assumes
that the actual blur satisfies up to a certain degree of parametric
structure, as there are many well-known parametric blurs in practical
applications. Further, it can be tailored flexibly to include
other blur types if some prior parametric knowledge of the blur
is available. A manifold soft parametric modeling technique is
proposed to generate the blur manifolds, and estimate the fuzzy
blur structure. The PDR scheme involves the development of
the meaningful cost function, the estimation of blur support and
structure, and the optimization of the cost function. Experimental
results show that it is effective in restoring degraded images under
different environments.
Keywords :
blind image deconvolution , Blur identification , conjugate gradient optimization , double regularization.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING