Perceptually Inspired Variational Retinex Methods for Enhancing and Restoring Images
Date
2021
Authors
P, Febin I.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Image restoration and enhancement are the two inevitable pre-processing activities that
we come across in almost all imaging applications. Apparently, these two requirements
contradict each other as one is a complement of the other. The image restoration aims
at smoothing out the signal to reduce the noise interventions. On the other hand, enhancement
seeks for an image with non-smooth features. Therefore, one should aim for
a trade-off between these two requirements when providing a solution. Perceptually inspired
frameworks have taken a considerable lead in image restoration and enhancement
activities, as they seek for a visually appealing solution in addition to their excellent performance
in terms of statistical quantifications. Retinex framework is being explored
extensively in the literature to provide the desired enhancement to the images under
consideration. This thesis provides an in-depth insight into various restoration frameworks
and contributes a set of state-of-the-art restoration and enhancement models to
assist the preprocessing step of various imaging applications with specific relevance to
satellite and medical imaging. The degradation analysis is the primary step in an automated
restoration framework. As one cannot apply a blanket restoration model for
all kinds of distortions, the appropriate models are designed in due respect to the noise
distribution of the input data. The second chapter of the thesis contributes a fully automated
framework for analysing and detecting the noise distribution of the noise from
input data. Analysis of noise distribution duly provides an insight to choose appropriate
variational model to restore the images from the specific degradation analysed therein.
A machine learning approach is employed to analyse the noise distribution from the
input image characteristics. Various statistical and geometric features of the images are
analysed to arrive at the conclusion regarding the distribution. Subsequent to the noise
distribution analysis, the respective retinex based variational models are chosen to restore
and enhance the images. One of the major issues with the variational models is
that, they converge slowly when explicit numerical schemes are used for solving them.
Many models designed under this framework use the explicit schemes due to the ease of
implementation. Fast numerical implementations are one of the requirements of a realtime
application model. This thesis investigates some of the fast numerical schemes
such as Bregman iteration scheme redesigned for the problem under consideration to
effectively solve the problems. Moreover, the computational cost is a major matter for
i
concern among the scientists, as most of the practically viable systems should be computationally
efficient to be used under a real-time scenario. This thesis addresses this
issue considerably well by employing parallel computing algorithms designed to be executed
under multi-processing environments to improve the computational efficiency of
the model.
Description
Keywords
Department of Mathematical and Computational Sciences, Perceptually inspired model, Retinex framework, Variational restoration models, Data-correlated noise, Image enhancement, Satellite and medical image enhancement