Modulus of continuity and its application in classifying the smoothness of images.

The problems of de-blurring, de-noising, compression and segmenta- tion are fundamental problems in image processing. Each of these prob- lems can be formulated as a problem to find some approximation of an initial image. To find this approximation one needs to specify the ap- proximation space and...

Full description

Bibliographic Details
Main Author: Pirzamanbein, Behnaz
Format: Others
Language:English
Published: Linnéuniversitetet, Institutionen för datavetenskap, fysik och matematik, DFM 2011
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:lnu:diva-12313
Description
Summary:The problems of de-blurring, de-noising, compression and segmenta- tion are fundamental problems in image processing. Each of these prob- lems can be formulated as a problem to find some approximation of an initial image. To find this approximation one needs to specify the ap- proximation space and in what space the error between the image and its approximation should be calculated. Using the space of Bounded Variation, BV, became very popular in the last decade. However it was later proved that for a rich variety of nat- ural images it is more effective to use spaces of smooth functions that are called Besov spaces instead of BV. In the previous papers two methods for classifying the smoothness of images were suggested. The DeVore’s method based on the wavelet transform and Carasso’s method based on singular integrals are reviewed. The classical definition of Besov spaces is based on the modulus of continuity. In this master thesis a new method is suggested for classifying the smoothness of images based on this definition. The developed method was applied to some images to classify the smoothness of them.