Stochastic Modeling for Medical Image Analysis
β Scribed by Ayman El-Baz (Author); Georgy Gimelβfarb (Author); Jasjit S. Suri (Author)
- Publisher
- CRC Press
- Year
- 2015
- Leaves
- 299
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Stochastic Modeling for Medical Image Analysis provides a brief introduction to medical imaging, stochastic modeling, and model-guided image analysis.Today, image-guided computer-assisted diagnostics (CAD) faces two basic challenging problems. The first is the computationally feasible and accurate modeling of images from different modalities to obt
β¦ Table of Contents
Medical Imaging Modalities. From Images to Graphical Models. IRF Models: Estimating Marginals. Markov-Gibbs Random Field Models: Estimating Signal Interactions. Applications: Image Alignment. Segmenting Multimodal Images. Segmenting with Deformable Models. Segmenting with Shape and Appearance Priors. Cine Cardiac MRI Analysis. Sizing Cardiac Pathologies.
β¦ Subjects
Engineering & Technology;Biomedical Engineering;Physical Sciences;Physics;Medical Physics
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