Abstract:
Image restoration is fundamental to visual information processing systems. In many
real world scenarios, noise and blur are the two main unavoidable sources of degra-
dation in images. The problem is deemed as an ill-posed inverse by nature due
to the simultaneous occurrences of noise and blur in the image. Blurring function
categorizes the degradation as space variant (SVD) if di erent spatial locations of
the recorded scene are convolved by varying point spread function. In contrast,
the degradation is categorized as spatially invariant (SID) if a unique point spread
function blurs the whole image. This dissertation focuses on spatial degradations,
initiating from space invariant towards space variant.
Existing methods for restoration of SVD images, for example, neural networks and
numerical optimization bear the limitations of high cost, lower restoration, less gen-
eralization, discontinuity and instability for di erent spatial locations. It is learnt
that three factors are vital to develop an e ective framework for restoration, which
are:
1. The optimization of the ill-posed inverse restoration problem by minimizing
constrained error function
2. A smoothness constraint
3. A regularization scheme
The main objective of this dissertation is to improve the restoration results, by
possible applications of new intelligent methods. This dissertation provides com-
prehensive solutions to both spatial degradation problems, by considering above
three factors. Firstly, SID images are restored, by a steepest descent based restora-
tion approach. In this approach, an e cient smoothness constraint is proposed, to
model the error function. In the next step, the steepest descent based approach is
improved and a novel fuzzy regularization scheme is also proposed to better model
the error function. It performed better than the existing methods on a speci c blur
function and low power additive noise. However, local search properties of gradient
based approaches and eventually lower restoration for SVD images, due to their
high sensitivity for varying textures, noise powers and blurs allowed for the possible
application of computational intelligence models.
Finally, in this dissertation, a new optimization framework is proposed for image
restoration of SVD images. In the proposed framework, particle swarm optimiza-
tion based evolution is retained to minimize the Modi ed Error Estimate (MEE),
for better restoration. The framework added hyper-heuristic layer to combine local
and global search properties. Therefore, randomness in the evolution, augmented
with apriori knowledge from problem domain, assisted in achieving the objective of
better restoration. It introduced new swarm initialization and mutation of global
best particle of the swarm. In addition, an adaptive weighted regularization scheme
is introduced in MEE to cater with the uncertainty due to ill-posed nature of the in-
verse problem. Furthermore, a new fuzzy logic and mathematical morphology based
regularization scheme is also proposed in the framework, to improve the restoration
stability and generalization, for SVD images.
Di erent experiments are performed to observe the performance of proposed solu-
tions. Visual and quantitative results are obtained and provided for each experiment.
Signal-to-noise ratio (SNR) and mean-squared-error (MSE) are computed for com-
parative analysis, which endorsed better restoration quantitatively, over well-known
restoration methods. However, the stability in restoration performance of proposed
framework is observed in visual results, for SVD images. Detailed experimental and
comparative analysis shown better restoration, stabilization and generalization of
the proposed framework for varied textures in standard and simulated images, and
noises over well-known restoration approaches.