Biomedical image analysis: segmentation
Gespeichert in:
1. Verfasser: | |
---|---|
Format: | Elektronisch E-Book |
Sprache: | English |
Veröffentlicht: |
[San Rafael, Calif.]
Morgan & Claypool Publishers
c2009
|
Schriftenreihe: | Synthesis lectures on image, video, and multimedia processing
9 |
Schlagworte: | |
Online-Zugang: | TUM01 Volltext |
Beschreibung: | Title from PDF t.p. (viewed Mar. 16, 2009) Includes bibliographical references (p. 101-106) Introduction -- Parametric active contours -- Overview -- What is a parametric active contour -- Active contour evolution -- Algorithm KWT -- Snake external forces -- Gradient vector flow -- Vector field convolution active contours -- Inverse problem approach to active contour initialization -- Feature-weighted snakes -- Area-weighted snakes -- Correlation-weighted snakes -- Snakes with special parameterization -- Spline snakes: open, closed, and clamped B-splines -- Gradient descent method for spline snake computation -- Segmenting leukocytes via spline snakes -- Rigid contour snakes -- Active contours in a Bayesian framework -- Overview -- Bayesian framework for active contour -- An introduction to the Bayesian framework -- A case study: mouse heart segmentation -- Active models with shape priors -- Active shape models -- Training of ASMs -- Generalized snakes (Gsnakes) -- Training of Gsnakes -- Segmentation using Gsnakes -- Geometric active contours -- Overview -- Level sets and geometric active contours -- Binary flow -- Area-weighted binary flow -- Active contours without edges -- Cell detection using a variational approach -- Segmentation with graph algorithms -- Overview -- Shortest path snakes -- Binary labeling with graph cut -- Binary labeling with minimum cut -- Pixel labeling with normalized cut -- Scale-space image filtering for segmentation -- Overview -- Scale space -- Anisotropic diffusion -- Speckle reducing anisotropic diffusion -- Locally monotonic diffusion -- Locally monotonic segmentation -- Morphological local monotonicity -- Inclusion filters -- Acknowledgments -- References -- Author biographies The sequel to the popular lecture book entitled Biomedical Image Analysis: Tracking, this book on Biomedical Image Analysis: Segmentation tackles the challenging task of segmenting biological and medical images. The problem of partitioning multidimensional biomedical data into meaningful regions is perhaps the main roadblock in the automation of biomedical image analysis. Whether the modality of choice is MRI, PET, ultrasound, SPECT, CT, or one of a myriad of microscopy platforms, image segmentation is a vital step in analyzing the constituent biological or medical targets. This book provides a state-of-the-art, comprehensive look at biomedical image segmentation that is accessible to well-equipped undergraduates, graduate students, and research professionals in the biology, biomedical, medical, and engineering fields. Active model methods that have emerged in the last few years are a focus of the book, including parametric active contour and active surface models, active shape models, and geometric active contours that adapt to the image topology. Additionally, Biomedical Image Analysis: Segmentation details attractive new methods that use graph theory in segmentation of biomedical imagery. Finally, the use of exciting new scale space tools in biomedical image analysis is reported |
Beschreibung: | 1 Online-Ressource (viii, 107 p.) |
ISBN: | 1598290207 1598290215 9781598290219 |
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490 | 0 | |a Synthesis lectures on image, video, and multimedia processing |v 9 | |
500 | |a Title from PDF t.p. (viewed Mar. 16, 2009) | ||
500 | |a Includes bibliographical references (p. 101-106) | ||
500 | |a Introduction -- Parametric active contours -- Overview -- What is a parametric active contour -- Active contour evolution -- Algorithm KWT -- Snake external forces -- Gradient vector flow -- Vector field convolution active contours -- Inverse problem approach to active contour initialization -- Feature-weighted snakes -- Area-weighted snakes -- Correlation-weighted snakes -- Snakes with special parameterization -- Spline snakes: open, closed, and clamped B-splines -- Gradient descent method for spline snake computation -- Segmenting leukocytes via spline snakes -- Rigid contour snakes -- Active contours in a Bayesian framework -- Overview -- Bayesian framework for active contour -- An introduction to the Bayesian framework -- A case study: mouse heart segmentation -- Active models with shape priors -- Active shape models -- Training of ASMs -- Generalized snakes (Gsnakes) -- Training of Gsnakes -- Segmentation using Gsnakes -- Geometric active contours -- Overview -- Level sets and geometric active contours -- Binary flow -- Area-weighted binary flow -- Active contours without edges -- Cell detection using a variational approach -- Segmentation with graph algorithms -- Overview -- Shortest path snakes -- Binary labeling with graph cut -- Binary labeling with minimum cut -- Pixel labeling with normalized cut -- Scale-space image filtering for segmentation -- Overview -- Scale space -- Anisotropic diffusion -- Speckle reducing anisotropic diffusion -- Locally monotonic diffusion -- Locally monotonic segmentation -- Morphological local monotonicity -- Inclusion filters -- Acknowledgments -- References -- Author biographies | ||
500 | |a The sequel to the popular lecture book entitled Biomedical Image Analysis: Tracking, this book on Biomedical Image Analysis: Segmentation tackles the challenging task of segmenting biological and medical images. The problem of partitioning multidimensional biomedical data into meaningful regions is perhaps the main roadblock in the automation of biomedical image analysis. Whether the modality of choice is MRI, PET, ultrasound, SPECT, CT, or one of a myriad of microscopy platforms, image segmentation is a vital step in analyzing the constituent biological or medical targets. This book provides a state-of-the-art, comprehensive look at biomedical image segmentation that is accessible to well-equipped undergraduates, graduate students, and research professionals in the biology, biomedical, medical, and engineering fields. Active model methods that have emerged in the last few years are a focus of the book, including parametric active contour and active surface models, active shape models, and geometric active contours that adapt to the image topology. Additionally, Biomedical Image Analysis: Segmentation details attractive new methods that use graph theory in segmentation of biomedical imagery. Finally, the use of exciting new scale space tools in biomedical image analysis is reported | ||
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700 | 1 | |a Ray, Nilanjan |e Sonstige |4 oth | |
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Datensatz im Suchindex
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id | DE-604.BV040473973 |
illustrated | Not Illustrated |
indexdate | 2024-07-10T00:24:36Z |
institution | BVB |
isbn | 1598290207 1598290215 9781598290219 |
language | English |
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physical | 1 Online-Ressource (viii, 107 p.) |
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series2 | Synthesis lectures on image, video, and multimedia processing |
spelling | Acton, Scott T. Verfasser (DE-588)171800281 aut Biomedical image analysis segmentation Scott T. Acton and Nilanjan Ray [San Rafael, Calif.] Morgan & Claypool Publishers c2009 1 Online-Ressource (viii, 107 p.) txt rdacontent c rdamedia cr rdacarrier Synthesis lectures on image, video, and multimedia processing 9 Title from PDF t.p. (viewed Mar. 16, 2009) Includes bibliographical references (p. 101-106) Introduction -- Parametric active contours -- Overview -- What is a parametric active contour -- Active contour evolution -- Algorithm KWT -- Snake external forces -- Gradient vector flow -- Vector field convolution active contours -- Inverse problem approach to active contour initialization -- Feature-weighted snakes -- Area-weighted snakes -- Correlation-weighted snakes -- Snakes with special parameterization -- Spline snakes: open, closed, and clamped B-splines -- Gradient descent method for spline snake computation -- Segmenting leukocytes via spline snakes -- Rigid contour snakes -- Active contours in a Bayesian framework -- Overview -- Bayesian framework for active contour -- An introduction to the Bayesian framework -- A case study: mouse heart segmentation -- Active models with shape priors -- Active shape models -- Training of ASMs -- Generalized snakes (Gsnakes) -- Training of Gsnakes -- Segmentation using Gsnakes -- Geometric active contours -- Overview -- Level sets and geometric active contours -- Binary flow -- Area-weighted binary flow -- Active contours without edges -- Cell detection using a variational approach -- Segmentation with graph algorithms -- Overview -- Shortest path snakes -- Binary labeling with graph cut -- Binary labeling with minimum cut -- Pixel labeling with normalized cut -- Scale-space image filtering for segmentation -- Overview -- Scale space -- Anisotropic diffusion -- Speckle reducing anisotropic diffusion -- Locally monotonic diffusion -- Locally monotonic segmentation -- Morphological local monotonicity -- Inclusion filters -- Acknowledgments -- References -- Author biographies The sequel to the popular lecture book entitled Biomedical Image Analysis: Tracking, this book on Biomedical Image Analysis: Segmentation tackles the challenging task of segmenting biological and medical images. The problem of partitioning multidimensional biomedical data into meaningful regions is perhaps the main roadblock in the automation of biomedical image analysis. Whether the modality of choice is MRI, PET, ultrasound, SPECT, CT, or one of a myriad of microscopy platforms, image segmentation is a vital step in analyzing the constituent biological or medical targets. This book provides a state-of-the-art, comprehensive look at biomedical image segmentation that is accessible to well-equipped undergraduates, graduate students, and research professionals in the biology, biomedical, medical, and engineering fields. Active model methods that have emerged in the last few years are a focus of the book, including parametric active contour and active surface models, active shape models, and geometric active contours that adapt to the image topology. Additionally, Biomedical Image Analysis: Segmentation details attractive new methods that use graph theory in segmentation of biomedical imagery. Finally, the use of exciting new scale space tools in biomedical image analysis is reported Mathematik Diagnostic imaging / Digital techniques Image analysis / Mathematics Image processing / Digital techniques Ray, Nilanjan Sonstige oth Erscheint auch als Druckausgabe 978-1-59829-020-2 http://search.ebscohost.com/login.aspx?direct=true&scope=site&db=nlebk&db=nlabk&AN=44019 Verlag Volltext |
spellingShingle | Acton, Scott T. Biomedical image analysis segmentation Mathematik Diagnostic imaging / Digital techniques Image analysis / Mathematics Image processing / Digital techniques |
title | Biomedical image analysis segmentation |
title_auth | Biomedical image analysis segmentation |
title_exact_search | Biomedical image analysis segmentation |
title_full | Biomedical image analysis segmentation Scott T. Acton and Nilanjan Ray |
title_fullStr | Biomedical image analysis segmentation Scott T. Acton and Nilanjan Ray |
title_full_unstemmed | Biomedical image analysis segmentation Scott T. Acton and Nilanjan Ray |
title_short | Biomedical image analysis |
title_sort | biomedical image analysis segmentation |
title_sub | segmentation |
topic | Mathematik Diagnostic imaging / Digital techniques Image analysis / Mathematics Image processing / Digital techniques |
topic_facet | Mathematik Diagnostic imaging / Digital techniques Image analysis / Mathematics Image processing / Digital techniques |
url | http://search.ebscohost.com/login.aspx?direct=true&scope=site&db=nlebk&db=nlabk&AN=44019 |
work_keys_str_mv | AT actonscottt biomedicalimageanalysissegmentation AT raynilanjan biomedicalimageanalysissegmentation |