5 research outputs found
Blind image deconvolution: nonstationary Bayesian approaches to restoring blurred photos
High quality digital images have become pervasive in modern scientific and everyday life —
in areas from photography to astronomy, CCTV, microscopy, and medical imaging. However
there are always limits to the quality of these images due to uncertainty and imprecision in the
measurement systems. Modern signal processing methods offer the promise of overcoming
some of these problems by postprocessing
these blurred and noisy images. In this thesis,
novel methods using nonstationary statistical models are developed for the removal of blurs
from out of focus and other types of degraded photographic images.
The work tackles the fundamental problem blind image deconvolution (BID); its goal is
to restore a sharp image from a blurred observation when the blur itself is completely unknown.
This is a “doubly illposed”
problem — extreme lack of information must be countered
by strong prior constraints about sensible types of solution. In this work, the hierarchical
Bayesian methodology is used as a robust and versatile framework to impart the required prior
knowledge.
The thesis is arranged in two parts. In the first part, the BID problem is reviewed, along
with techniques and models for its solution. Observation models are developed, with an
emphasis on photographic restoration, concluding with a discussion of how these are reduced
to the common linear spatially-invariant
(LSI) convolutional model. Classical methods for the
solution of illposed
problems are summarised to provide a foundation for the main theoretical
ideas that will be used under the Bayesian framework. This is followed by an indepth
review
and discussion of the various prior image and blur models appearing in the literature, and then
their applications to solving the problem with both Bayesian and nonBayesian
techniques.
The second part covers novel restoration methods, making use of the theory presented in Part I.
Firstly, two new nonstationary image models are presented. The first models local variance in
the image, and the second extends this with locally adaptive noncausal
autoregressive (AR)
texture estimation and local mean components. These models allow for recovery of image
details including edges and texture, whilst preserving smooth regions. Most existing methods
do not model the boundary conditions correctly for deblurring of natural photographs, and a
Chapter is devoted to exploring Bayesian solutions to this topic.
Due to the complexity of the models used and the problem itself, there are many challenges
which must be overcome for tractable inference. Using the new models, three different inference
strategies are investigated: firstly using the Bayesian maximum marginalised a posteriori
(MMAP) method with deterministic optimisation; proceeding with the stochastic methods
of variational Bayesian (VB) distribution approximation, and simulation of the posterior distribution
using the Gibbs sampler. Of these, we find the Gibbs sampler to be the most effective
way to deal with a variety of different types of unknown blurs. Along the way, details are given
of the numerical strategies developed to give accurate results and to accelerate performance.
Finally, the thesis demonstrates state of the art
results in blind restoration of synthetic and real
degraded images, such as recovering details in out of focus photographs
Bifurcation analysis of the Topp model
In this paper, we study the 3-dimensional Topp model for the dynamicsof diabetes. We show that for suitable parameter values an equilibrium of this modelbifurcates through a Hopf-saddle-node bifurcation. Numerical analysis suggests thatnear this point Shilnikov homoclinic orbits exist. In addition, chaotic attractors arisethrough period doubling cascades of limit cycles.Keywords Dynamics of diabetes · Topp model · Reduced planar quartic Toppsystem · Singular point · Limit cycle · Hopf-saddle-node bifurcation · Perioddoubling bifurcation · Shilnikov homoclinic orbit · Chao