<p>Image segmentation consists of dividing an image domain into disjoint regions according to a characterization of the image within or in-between the regions. Therefore, segmenting an image is to divide its domain into relevant components. The efficient solution of the key problems in image segment
Variational and Level Set Methods in Image Segmentation
โ Scribed by Amar Mitiche, Ismail Ben Ayed (auth.)
- Publisher
- Springer-Verlag Berlin Heidelberg
- Year
- 2011
- Tongue
- English
- Leaves
- 194
- Series
- Springer Topics in Signal Processing 5
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
Image segmentation consists of dividing an image domain into disjoint regions according to a characterization of the image within or in-between the regions. Therefore, segmenting an image is to divide its domain into relevant components. The efficient solution of the key problems in image segmentation promises to enable a rich array of useful applications. The current major application areas include robotics, medical image analysis, remote sensing, scene understanding, and image database retrieval. The subject of this book is image segmentation by variational methods with a focus on formulations which use closed regular plane curves to define the segmentation regions and on a level set implementation of the corresponding active curve evolution algorithms. Each method is developed from an objective functional which embeds constraints on both the image domain partition of the segmentation and the image data within or in-between the partition regions. The necessary conditions to optimize the objective functional are then derived and solved numerically. The book covers, within the active curve and level set formalism, the basic two-region segmentation methods, multiregion extensions, region merging, image modeling, and motion based segmentation. To treat various important classes of images, modeling investigates several parametric distributions such as the Gaussian, Gamma, Weibull, and Wishart. It also investigates non-parametric models. In motion segmentation, both optical flow and the movement of real three-dimensional objects are studied.
โฆ Table of Contents
Front Matter....Pages i-viii
Introduction....Pages 1-13
Introductory Background....Pages 15-31
Basic Methods....Pages 33-58
Multiregion Segmentation....Pages 59-81
Image Models....Pages 83-122
Region Merging Priors....Pages 123-137
Motion Based Image Segmentation....Pages 139-160
Image Segmentation According to the Movement of Real Objects....Pages 161-180
Appendix....Pages 181-188
Back Matter....Pages 189-190
โฆ Subjects
Signal, Image and Speech Processing; Image Processing and Computer Vision
๐ SIMILAR VOLUMES
<p>Image segmentation consists of dividing an image domain into disjoint regions according to a characterization of the image within or in-between the regions. Therefore, segmenting an image is to divide its domain into relevant components. The efficient solution of the key problems in image segment
Image segmentation is used in a wide range of useful applications such as remote sensing, medicine, robotics, database search, and security.The textprovides an overview of level set methods for image and image sequence segmentation."
<p>Level set methods are numerical techniques which offer remarkably powerful tools for understanding, analyzing, and computing interface motion in a host of settings. When used for medical imaging analysis and segmentation, the function assigns a label to each pixel or voxel and optimality is defin
The topic of level sets is currently very timely and useful for creating realistic 3-D images and animations. They are powerful numerical techniques for analyzing and computing interface motion in a host of application settings. In computer vision, it has been applied to stereo and segmentation, whe