Partial Differential Equation Based Methods in Medical Image Processing

Partial Differential Equation Based Methods in Medical Image Processing

Author: Kwok-Wing Anthony Sum

Publisher: Open Dissertation Press

Published: 2017-01-27

Total Pages:

ISBN-13: 9781361470336

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This dissertation, "Partial Differential Equation Based Methods in Medical Image Processing" by Kwok-wing, Anthony, Sum, 岑國榮, was obtained from The University of Hong Kong (Pokfulam, Hong Kong) and is being sold pursuant to Creative Commons: Attribution 3.0 Hong Kong License. The content of this dissertation has not been altered in any way. We have altered the formatting in order to facilitate the ease of printing and reading of the dissertation. All rights not granted by the above license are retained by the author. Abstract: Abstract of thesis entitled Partial Di(R)erential Equation Based Methods in Medical Image Processing Submitted by Anthony Kwok Wing SUM for the degree of Doctor of Philosophy at The University of Hong Kong in August 2007 Medical image analysis is essential for clinical diagnosis and surgical planning. To cope with the rapid development of modern imaging technologies, there is a continuingneedforadvancedimageprocessingtechniquestoimproveimagequality and automate the analytical processes. The two most important and fundamental image processing techniques required for fully utilizing and e(R)ectively interpreting the acquired images are image segmentation and image ltering. They play an indispensableroleintheentiremedicalimageanalysisprocess. Inthisthesis, image segmentation and ltering methods using partial di(R)erential equation (PDE) are studied and explored. iiIn daily clinical practice, physicians are required to identify anatomical struc- tures from a large number of medical images. This identication process can be aidedbyimagesegmentationtechniques. Inthisthesis, newdevelopmentsinactive contour models are introduced for image segmentation. First, parametric active contoursaredesirabletoextractobjectswithaconnedboundary. Arobustpara- metric active contour model with a novel external force, namely boundary vector eld (BVF), is proposed. This new model is shown to be more ecient than other existing parametric active contour models in terms of ease of initialization, extrac- tion capability and speed. Second, geometric active contour models are found to be well suited for extracting topologically complex objects such as vessels in an- giograms. However, angiograms and other medical images commonly su(R)er from a nonuniform illumination artifact. This artifact induces serious problem in object extraction during image segmentation. Thus, a novel segmentation scheme is pro- posed based on level set methods and incorporating local contrast information in the formulation. This scheme improves the extraction outcomes even if the image su(R)ers from nonuniform illuminations artifacts. Di(R)erent imaging modalities and imaging environments may generate di(R)erent levels of noise during the data acquisition phase. Image ltering is therefore an essential technique for reducing the noise level and improving the visual quality of an image. Anisotropic di(R)usion is a PDE based ltering method, which has found useful practical applications since its introduction. The kernel of an anisotropic iiidi(R)usionmodelisthedi(R)usioncoecient, whichcharacterizestheoverallbehavior of the entire model. In this study, a new class of anisotropic di(R)usion model is formulated and its outstanding performance is demonstrated with experimental results. Itisshownthatbothsignal-to-noise ratio andvisualqualityofthe ltered images using the new di(R)usion model are improved. In summary, several creative and innovative developments of low level image processing techniques are reported in the thesis. These low level techniques are a critical requirement for advanced high level image analysis procedures, and are indispensable for the automation of many medical image analysis tasks. An abstract of exactly 434 words iv DOI: 10.5353/th_b3895862 Subjects: Differential equations, Partial Diagnostic imaging - Mathematical models Image processing - Mathematics


Mathematical Models for Registration and Applications to Medical Imaging

Mathematical Models for Registration and Applications to Medical Imaging

Author: Otmar Scherzer

Publisher: Springer Science & Business Media

Published: 2006-10-03

Total Pages: 192

ISBN-13: 3540347674

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This volume gives a survey on mathematical and computational methods in image registration. During the last year sophisticated numerical models for registration and efficient numerical methods have been proposed. Many of them are contained in this volume. The book also summarizes the state-of-the-art in mathematical and computational methods in image registration. In addition, it covers some practical applications and new directions with industrial relevance in data processing.


Image Processing Based on Partial Differential Equations

Image Processing Based on Partial Differential Equations

Author: Xue-Cheng Tai

Publisher: Springer Science & Business Media

Published: 2006-11-22

Total Pages: 440

ISBN-13: 3540332677

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This book publishes a collection of original scientific research articles that address the state-of-art in using partial differential equations for image and signal processing. Coverage includes: level set methods for image segmentation and construction, denoising techniques, digital image inpainting, image dejittering, image registration, and fast numerical algorithms for solving these problems.


Geometric Methods in Bio-Medical Image Processing

Geometric Methods in Bio-Medical Image Processing

Author: Ravikanth Malladi

Publisher: Springer Science & Business Media

Published: 2012-12-06

Total Pages: 151

ISBN-13: 3642559875

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The genesis of this book goes back to the conference held at the University of Bologna, June 1999, on collaborative work between the University of California at Berkeley and the University of Bologna. The book, in its present form, is a compilation of some of the recent work using geometric partial differential equations and the level set methodology in medical and biomedical image analysis. The book not only gives a good overview on some of the traditional applications in medical imagery such as, CT, MR, Ultrasound, but also shows some new and exciting applications in the area of Life Sciences, such as confocal microscope image understanding.


Stochastic Partial Differential Equations for Computer Vision with Uncertain Data

Stochastic Partial Differential Equations for Computer Vision with Uncertain Data

Author: Tobias Preusser

Publisher: Springer Nature

Published: 2022-06-01

Total Pages: 150

ISBN-13: 3031025946

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In image processing and computer vision applications such as medical or scientific image data analysis, as well as in industrial scenarios, images are used as input measurement data. It is good scientific practice that proper measurements must be equipped with error and uncertainty estimates. For many applications, not only the measured values but also their errors and uncertainties, should be—and more and more frequently are—taken into account for further processing. This error and uncertainty propagation must be done for every processing step such that the final result comes with a reliable precision estimate. The goal of this book is to introduce the reader to the recent advances from the field of uncertainty quantification and error propagation for computer vision, image processing, and image analysis that are based on partial differential equations (PDEs). It presents a concept with which error propagation and sensitivity analysis can be formulated with a set of basic operations. The approach discussed in this book has the potential for application in all areas of quantitative computer vision, image processing, and image analysis. In particular, it might help medical imaging finally become a scientific discipline that is characterized by the classical paradigms of observation, measurement, and error awareness. This book is comprised of eight chapters. After an introduction to the goals of the book (Chapter 1), we present a brief review of PDEs and their numerical treatment (Chapter 2), PDE-based image processing (Chapter 3), and the numerics of stochastic PDEs (Chapter 4). We then proceed to define the concept of stochastic images (Chapter 5), describe how to accomplish image processing and computer vision with stochastic images (Chapter 6), and demonstrate the use of these principles for accomplishing sensitivity analysis (Chapter 7). Chapter 8 concludes the book and highlights new research topics for the future.


PDE and Level Sets

PDE and Level Sets

Author: Swamy Laxminarayan

Publisher: Springer Science & Business Media

Published: 2006-04-11

Total Pages: 446

ISBN-13: 0306479303

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PDE & Level Sets: Algorithmic Approaches to Static & Motion Imagery is specially dedicated to the segmentation of complex shapes from the field of imaging sciences using level sets and PDEs. It covers the fundamentals of level sets, different kinds of concepts of both geodesic curvature flows and planar flows, as well as the power of incorporation of regional-statistics in level set framework. In covering this material, this book presents segmentation of object-in-motion imagery based on level sets in eigen analysis framework, while also presenting classical problems of boundary completion in cognitive images, like the pop-up of subjective contours in the famous triangle of Kanizsa using surface evolution framework, or the mean curvature evolution of a graph with respect to the Riemannian metric induced by the image. All results are presented for modal completion of cognitive objects with missing boundaries.


Inverse Problems, Image Analysis, and Medical Imaging

Inverse Problems, Image Analysis, and Medical Imaging

Author: M. Zuhair Nashed

Publisher: American Mathematical Soc.

Published: 2002

Total Pages: 322

ISBN-13: 0821829793

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This book contains the proceedings of the Special Session, Interaction of Inverse Problems and Image Analysis, held at the January 2001 meeting of the AMS in New Orleans, LA. The common thread among inverse problems, signal analysis, and image analysis is a canonical problem: recovering an object (function, signal, picture) from partial or indirect information about the object. Both inverse problems and imaging science have emerged in recent years as interdisciplinary research fields with profound applications in many areas of science, engineering, technology, and medicine. Research in inverse problems and image processing shows rich interaction with several areas of mathematics and strong links to signal processing, variational problems, applied harmonic analysis, and computational mathematics. This volume contains carefully referred and edited original research papers and high-level survey papers that provide overview and perspective on the interaction of inverse problems, image analysis, and medical imaging. The book is suitable for graduate students and researchers interested in signal and image processing and medical imaging.


Partial Differential Equation Based Image Processing and Applications

Partial Differential Equation Based Image Processing and Applications

Author: Rajeev Srivastava

Publisher: LAP Lambert Academic Publishing

Published: 2013-01

Total Pages: 224

ISBN-13: 9783659312113

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Main coverage: Basic concepts of PDE based image processing and related works. PDE based image interpolation. PDE based image restoration. PDE based speckle reduction from images. Generalization to blind deconvolution problems. In this work, basic concepts of PDE based image processing, its applications and related works has been discussed. The main problems which are addressed in this work include image interpolation, image restoration, speckle reduction and generalization of restoration problems to blind deconvolution problems. Applications of work include on the images arising from various imaging domains such as medical images, simple digital images, microscopic images and astronomical images.