Brain Warping
- 1st Edition - November 12, 1998
- Latest edition
- Editor: Arthur W. Toga
- Language: English
Brain Warping is the premier book in the field of brain mapping to cover the mathematics, physics, computer science, and neurobiological issues related to brain spatial transf… Read more
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Description
Description
Brain Warping is the premier book in the field of brain mapping to cover the mathematics, physics, computer science, and neurobiological issues related to brain spatial transformation and deformation correction. All chapters are organized in a similar fashion, covering the history, theory, and implementation of the specific approach discussed for ease of reading. Each chapter also discusses the computer science implementations, including descriptions of the programs and computer codes used in its execution. Readers of Brain Warping will be able to understand all of the approaches currently used in brain mapping, incorporating multimodality, and multisubject comparisons.
Key features
Key features
@introbul:Key Features
@bul:* The only book of its kind
* Subject matter is the fastest growing area in the field of brain mapping
* Presents geometrically-based approaches to the field of brain mapping
* Discusses intensity-based approaches to the field of brain mapping
@bul:* The only book of its kind
* Subject matter is the fastest growing area in the field of brain mapping
* Presents geometrically-based approaches to the field of brain mapping
* Discusses intensity-based approaches to the field of brain mapping
Readership
Readership
AUDIENCE: Neuroscientists, academic neurologists, and 'mappers'; students, researchers, and laboratory staff involved in the study of the brain.
Table of contents
Table of contents
Overview:
A.W. Toga, An Introduction to Brain Warping.
J. Ashburner and K. Friston, Spatial Normalization.
Intensity Based Approaches:
R. Bajcsy, Elastic Deformation Utilizing a Mechanical System.
S. Kovacic, Multi-Resolution; Multiscale Approaches.
S. Warfield, A. Robatino, J. Dengler, F. Jolesz, and R. Kikinis, Nonlinear Registration and Template Driven Segmentation.
G. Christensen, M.I. Miller, and S.C. Joshi, Bayesian Framework for Image Registration Using Eigenfunctions.
J. Gee, Finite Element Methods.
M. Miller, S.C. Joshi, and G.E. Christensen, Large Deformation Fluid Diffeomorphisms for Landmark and Image Matching.
D.L. Collins and A.C. Evans, ANIMAL: Automatic Nonlinear Image Matching and Anatomical Labeling.
J.-P. Thirion, Diffusing Models and Applications.
F.L. Bookstein, Linear Methods for Nonlinear Maps.
H. Mueller and D. Ruprecht, Spatial Interpolants for Warping.
M.W. Vannier, Global Pattern Matching.
G. Subsol, Crest-Lines for Curve Based Warping.
D. Terzopolous, Snakes in Warping and Matching.
J.H. Downs III, J.L. Lancaster, and P.T. Fox, Surface Based Spatial Normalization Using Convex Hulls.
S. Lavallee, E. Bittar, and R. Szeliski, Elastic Registration and Inference Using Octree-Splines.
J.W. Haller, Brain Templates.
P. Thompson and A.W. Toga, Anatomically-Driven Strategies for High-Dimensional Brain Image Warping and Pathology Detection.
H. Drury, D.C. Van Essen, M. Corbetta, and A. Z. Snyder, Surface-Based Analyses of the Human Cerebral Cortex.
R.P. Woods, Automated Global Polynomial Warping.
Subject Index.
A.W. Toga, An Introduction to Brain Warping.
J. Ashburner and K. Friston, Spatial Normalization.
Intensity Based Approaches:
R. Bajcsy, Elastic Deformation Utilizing a Mechanical System.
S. Kovacic, Multi-Resolution; Multiscale Approaches.
S. Warfield, A. Robatino, J. Dengler, F. Jolesz, and R. Kikinis, Nonlinear Registration and Template Driven Segmentation.
G. Christensen, M.I. Miller, and S.C. Joshi, Bayesian Framework for Image Registration Using Eigenfunctions.
J. Gee, Finite Element Methods.
M. Miller, S.C. Joshi, and G.E. Christensen, Large Deformation Fluid Diffeomorphisms for Landmark and Image Matching.
D.L. Collins and A.C. Evans, ANIMAL: Automatic Nonlinear Image Matching and Anatomical Labeling.
J.-P. Thirion, Diffusing Models and Applications.
F.L. Bookstein, Linear Methods for Nonlinear Maps.
H. Mueller and D. Ruprecht, Spatial Interpolants for Warping.
M.W. Vannier, Global Pattern Matching.
G. Subsol, Crest-Lines for Curve Based Warping.
D. Terzopolous, Snakes in Warping and Matching.
J.H. Downs III, J.L. Lancaster, and P.T. Fox, Surface Based Spatial Normalization Using Convex Hulls.
S. Lavallee, E. Bittar, and R. Szeliski, Elastic Registration and Inference Using Octree-Splines.
J.W. Haller, Brain Templates.
P. Thompson and A.W. Toga, Anatomically-Driven Strategies for High-Dimensional Brain Image Warping and Pathology Detection.
H. Drury, D.C. Van Essen, M. Corbetta, and A. Z. Snyder, Surface-Based Analyses of the Human Cerebral Cortex.
R.P. Woods, Automated Global Polynomial Warping.
Subject Index.
Product details
Product details
- Edition: 1
- Latest edition
- Published: November 17, 1998
- Language: English
About the editor
About the editor
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Arthur W. Toga
Affiliations and expertise
University of California, Los Angeles, U.S.A.View book on ScienceDirect
View book on ScienceDirect
Read Brain Warping on ScienceDirect