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Comprehensive Mathematics for Computer Scientists 1: Sets and Numbers, Graphs and Algebra, Logic and Machines, Linear Geometry

Guerino Mazzola Gérard Milmeister Jody Weissmann

Resumen/Descripción – provisto por la editorial

No disponible.

Palabras clave – provistas por la editorial

Discrete Mathematics in Computer Science; Applications of Mathematics; Mathematical Logic and Formal Languages; Mathematics of Computing

Disponibilidad
Institución detectada Año de publicación Navegá Descargá Solicitá
No detectada 2006 SpringerLink

Información

Tipo de recurso:

libros

ISBN impreso

978-3-540-36873-1

ISBN electrónico

978-3-540-36874-8

Editor responsable

Springer Nature

País de edición

Reino Unido

Fecha de publicación

Información sobre derechos de publicación

© Springer 2006

Tabla de contenidos

Construction of Graphs

Guerino Mazzola; Gérard Milmeister; Jody Weissmann

The estimation and subsequent use of tissue () parameters at each image location can potentially lead to a more reliable classification of breast tissues. values can be estimated using multiple (typically 3) MRI images of different flip angles. However, breathing and other slight movements can render the highly non-linear estimation procedure error-prone. In this paper, a simultaneous multiple image registration method is proposed to solve this problem. The registration method is built upon the idea of conserving inverse consistency and transitivity among the multiple image transformations. The algorithm is applied to both simulated data and real breast MRI images. The performance is compared with existing pairwise image registration method. The results clearly indicate that the simultaneous multiple image registration algorithm leads to much more accurate estimation.

I - Sets, Numbers, and Graphs | Pp. 129-135

Some Special Graphs

Guerino Mazzola; Gérard Milmeister; Jody Weissmann

The estimation and subsequent use of tissue () parameters at each image location can potentially lead to a more reliable classification of breast tissues. values can be estimated using multiple (typically 3) MRI images of different flip angles. However, breathing and other slight movements can render the highly non-linear estimation procedure error-prone. In this paper, a simultaneous multiple image registration method is proposed to solve this problem. The registration method is built upon the idea of conserving inverse consistency and transitivity among the multiple image transformations. The algorithm is applied to both simulated data and real breast MRI images. The performance is compared with existing pairwise image registration method. The results clearly indicate that the simultaneous multiple image registration algorithm leads to much more accurate estimation.

I - Sets, Numbers, and Graphs | Pp. 137-142

Planarity

Guerino Mazzola; Gérard Milmeister; Jody Weissmann

The estimation and subsequent use of tissue () parameters at each image location can potentially lead to a more reliable classification of breast tissues. values can be estimated using multiple (typically 3) MRI images of different flip angles. However, breathing and other slight movements can render the highly non-linear estimation procedure error-prone. In this paper, a simultaneous multiple image registration method is proposed to solve this problem. The registration method is built upon the idea of conserving inverse consistency and transitivity among the multiple image transformations. The algorithm is applied to both simulated data and real breast MRI images. The performance is compared with existing pairwise image registration method. The results clearly indicate that the simultaneous multiple image registration algorithm leads to much more accurate estimation.

I - Sets, Numbers, and Graphs | Pp. 143-148

First Advanced Topic

Guerino Mazzola; Gérard Milmeister; Jody Weissmann

The estimation and subsequent use of tissue () parameters at each image location can potentially lead to a more reliable classification of breast tissues. values can be estimated using multiple (typically 3) MRI images of different flip angles. However, breathing and other slight movements can render the highly non-linear estimation procedure error-prone. In this paper, a simultaneous multiple image registration method is proposed to solve this problem. The registration method is built upon the idea of conserving inverse consistency and transitivity among the multiple image transformations. The algorithm is applied to both simulated data and real breast MRI images. The performance is compared with existing pairwise image registration method. The results clearly indicate that the simultaneous multiple image registration algorithm leads to much more accurate estimation.

I - Sets, Numbers, and Graphs | Pp. 149-156

Monoids, Groups, Rings, and Fields

Guerino Mazzola; Gérard Milmeister; Jody Weissmann

The estimation and subsequent use of tissue () parameters at each image location can potentially lead to a more reliable classification of breast tissues. values can be estimated using multiple (typically 3) MRI images of different flip angles. However, breathing and other slight movements can render the highly non-linear estimation procedure error-prone. In this paper, a simultaneous multiple image registration method is proposed to solve this problem. The registration method is built upon the idea of conserving inverse consistency and transitivity among the multiple image transformations. The algorithm is applied to both simulated data and real breast MRI images. The performance is compared with existing pairwise image registration method. The results clearly indicate that the simultaneous multiple image registration algorithm leads to much more accurate estimation.

II - Algebra, Formal Logic, and Linear Geometry | Pp. 159-179

Primes

Guerino Mazzola; Gérard Milmeister; Jody Weissmann

The estimation and subsequent use of tissue () parameters at each image location can potentially lead to a more reliable classification of breast tissues. values can be estimated using multiple (typically 3) MRI images of different flip angles. However, breathing and other slight movements can render the highly non-linear estimation procedure error-prone. In this paper, a simultaneous multiple image registration method is proposed to solve this problem. The registration method is built upon the idea of conserving inverse consistency and transitivity among the multiple image transformations. The algorithm is applied to both simulated data and real breast MRI images. The performance is compared with existing pairwise image registration method. The results clearly indicate that the simultaneous multiple image registration algorithm leads to much more accurate estimation.

II - Algebra, Formal Logic, and Linear Geometry | Pp. 181-189

Formal Propositional Logic

Guerino Mazzola; Gérard Milmeister; Jody Weissmann

The estimation and subsequent use of tissue () parameters at each image location can potentially lead to a more reliable classification of breast tissues. values can be estimated using multiple (typically 3) MRI images of different flip angles. However, breathing and other slight movements can render the highly non-linear estimation procedure error-prone. In this paper, a simultaneous multiple image registration method is proposed to solve this problem. The registration method is built upon the idea of conserving inverse consistency and transitivity among the multiple image transformations. The algorithm is applied to both simulated data and real breast MRI images. The performance is compared with existing pairwise image registration method. The results clearly indicate that the simultaneous multiple image registration algorithm leads to much more accurate estimation.

II - Algebra, Formal Logic, and Linear Geometry | Pp. 191-207

Formal Predicate Logic

Guerino Mazzola; Gérard Milmeister; Jody Weissmann

The estimation and subsequent use of tissue () parameters at each image location can potentially lead to a more reliable classification of breast tissues. values can be estimated using multiple (typically 3) MRI images of different flip angles. However, breathing and other slight movements can render the highly non-linear estimation procedure error-prone. In this paper, a simultaneous multiple image registration method is proposed to solve this problem. The registration method is built upon the idea of conserving inverse consistency and transitivity among the multiple image transformations. The algorithm is applied to both simulated data and real breast MRI images. The performance is compared with existing pairwise image registration method. The results clearly indicate that the simultaneous multiple image registration algorithm leads to much more accurate estimation.

II - Algebra, Formal Logic, and Linear Geometry | Pp. 209-222

Languages, Grammars, and Automata

Guerino Mazzola; Gérard Milmeister; Jody Weissmann

The estimation and subsequent use of tissue () parameters at each image location can potentially lead to a more reliable classification of breast tissues. values can be estimated using multiple (typically 3) MRI images of different flip angles. However, breathing and other slight movements can render the highly non-linear estimation procedure error-prone. In this paper, a simultaneous multiple image registration method is proposed to solve this problem. The registration method is built upon the idea of conserving inverse consistency and transitivity among the multiple image transformations. The algorithm is applied to both simulated data and real breast MRI images. The performance is compared with existing pairwise image registration method. The results clearly indicate that the simultaneous multiple image registration algorithm leads to much more accurate estimation.

II - Algebra, Formal Logic, and Linear Geometry | Pp. 223-260

Categories of Matrixes

Guerino Mazzola; Gérard Milmeister; Jody Weissmann

The estimation and subsequent use of tissue () parameters at each image location can potentially lead to a more reliable classification of breast tissues. values can be estimated using multiple (typically 3) MRI images of different flip angles. However, breathing and other slight movements can render the highly non-linear estimation procedure error-prone. In this paper, a simultaneous multiple image registration method is proposed to solve this problem. The registration method is built upon the idea of conserving inverse consistency and transitivity among the multiple image transformations. The algorithm is applied to both simulated data and real breast MRI images. The performance is compared with existing pairwise image registration method. The results clearly indicate that the simultaneous multiple image registration algorithm leads to much more accurate estimation.

II - Algebra, Formal Logic, and Linear Geometry | Pp. 261-278