<P><STRONG>Image Processing with MATLAB<SUP>®</SUP>: <EM>Applications in Medicine and Biology</EM> explains complex, theory-laden topics in image processing through examples and MATLAB<SUP>®</SUP> algorithms. It describes classical as well emerging areas in image processing and analysis. </P> <P></
Image processing with MATLAB: Applications in medicine and biology
✍ Scribed by Omer Demirkaya, Musa H. Asyali, Prasanna K. Sahoo
- Publisher
- CRC Press
- Year
- 2008
- Tongue
- English
- Leaves
- 444
- Series
- MATLAB Examples
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
✦ Synopsis
Image Processing with MATLAB®: Applications in Medicine and Biology explains complex, theory-laden topics in image processing through examples and MATLAB® algorithms. It describes classical as well emerging areas in image processing and analysis.
Providing many unique MATLAB codes and functions throughout, the book covers the theory of probability and statistics, two-dimensional fast Fourier transform, nonlinear diffusion filtering, and partial differential equation (PDE)-based image denoising techniques. It presents intensity-based image segmentation methods, including thresholding techniques as well as K-means and fuzzy C-means clustering techniques. The authors also explore Markov random field (MRF)-based image segmentation, boundary and curvature analysis methods, and parametric and geometric deformable models. The final chapters focus on three specific applications of image processing and analysis.
Reducing the need for the trial-and-error way of solving problems, this book helps readers understand advanced concepts by applying algorithms to real-world problems in medicine and biology.
✦ Subjects
Информатика и вычислительная техника;Обработка медиа-данных;Обработка изображений;
📜 SIMILAR VOLUMES
<P><STRONG>Image Processing with MATLAB<SUP>®</SUP>: <EM>Applications in Medicine and Biology</EM> explains complex, theory-laden topics in image processing through examples and MATLAB<SUP>®</SUP> algorithms. It describes classical as well emerging areas in image processing and analysis. </P> <P></
<P>In contrast to classical image analysis methods that employ "crisp" mathematics, fuzzy set techniques provide an elegant foundation and a set of rich methodologies for diverse image-processing tasks. However, a solid understanding of fuzzy processing requires a firm grasp of essential principles
Relying heavily on MATLAB® problems and examples, as well as simulated data, this text/reference surveys a vast array of signal and image processing tools for biomedical applications, providing a working knowledge of the technologies addressed while showcasing valuable implementation procedures, com
This book assumes that you have both a prior knowledge of Matlab and of signal processing concepts. It spends the first three chapters going over measurement and transducer systems, basic signals and systems, and classical methods of spectral analysis. Even though these chapters are meant to be a qu