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A01=Artyom M. Grigoryan
A01=Merughan M. Grigoryan
advanced CT image processing techniques
Author_Artyom M. Grigoryan
Author_Merughan M. Grigoryan
back-projection by the tensor transform
Cartesian Grid
Cartesian Lattice
Category=UYT
computed tomography algorithms
Convolution Equation
Diagonal Projection
Direction Images
Discrete Image
discrete lattice imaging
Discrete Tomography
End S1
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Exact Reconstruction
Filter BP Method
Filtered Backprojection Algorithm
Fourier Slice Theorem
Fourier slice transform
Geometrical Rays
Gray Scale Image
IEs
Image Reconstruction
image reconstruction from projections
image representation by particle field functions
linear convolution methods
medical image reconstruction
Merughan M. Grigoryan
method of summation
method of transferring geometry of rays
Original Coordinate System
Paired Transform
Polar Grid
principle of superposition by direction images
projection data analysis
Radon transform
Scanning Scheme
Signal Flow Graph
statistical averaging models
statistical model of image reconstruction
Subset M2
tensor and paired representations of the image
Tensor Method
Tensor Representation
Toeplitz Matrix

Product details

  • ISBN 9781466509948
  • Weight: 771g
  • Dimensions: 152 x 229mm
  • Publication Date: 15 Oct 2012
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Focusing on mathematical methods in computer tomography, Image Processing: Tensor Transform and Discrete Tomography with MATLAB® introduces novel approaches to help in solving the problem of image reconstruction on the Cartesian lattice. Specifically, it discusses methods of image processing along parallel rays to more quickly and accurately reconstruct images from a finite number of projections, thereby avoiding overradiation of the body during a computed tomography (CT) scan.

The book presents several new ideas, concepts, and methods, many of which have not been published elsewhere. New concepts include methods of transferring the geometry of rays from the plane to the Cartesian lattice, the point map of projections, the particle and its field function, and the statistical model of averaging. The authors supply numerous examples, MATLAB®-based programs, end-of-chapter problems, and experimental results of implementation.

The main approach for image reconstruction proposed by the authors differs from existing methods of back-projection, iterative reconstruction, and Fourier and Radon filtering. In this book, the authors explain how to process each projection by a system of linear equations, or linear convolutions, to calculate the corresponding part of the 2-D tensor or paired transform of the discrete image. They then describe how to calculate the inverse transform to obtain the reconstruction. The proposed models for image reconstruction from projections are simple and result in more accurate reconstructions.

Introducing a new theory and methods of image reconstruction, this book provides a solid grounding for those interested in further research and in obtaining new results. It encourages readers to develop effective applications of these methods in CT.

Artyom M. Grigoryan, Ph.D., is currently an associate professor at the Department of Electrical Engineering, University of Texas at San Antonio. He has authored or co-authored three books, including Brief Notes in Advanced DSP: Fourier Analysis with MATLAB® (2009) and Multidimensional Discrete Unitary Transforms: Representation: Partitioning, and Algorithms (2003) as well as two book chapters and many journal papers. He specializes in the theory and application of fast one- and multi-dimensional Fourier transforms, elliptic Fourier transforms, tensor and paired transforms, integer unitary heap transforms, design of robust linear and nonlinear filters, image encryption, computerized 2-D and 3-D tomography, and processing of biomedical images.

Merughan M. Grigoryan is currently conducting research on the theory and application of quantum mechanics in signal processing, differential equations, Fourier analysis, elliptic Fourier transforms, Hadamard matrices, fast integer unitary transformations, the theory and methods of the fast unitary transforms generated by signals, and methods of encoding in cryptography. He is the coauthor of the book Brief Notes in Advanced DSP: Fourier Analysis with MATLAB® (2009).

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