Digital Image

B181 - Zimní 18/19
Tento předmět se nenachází v Moodle. Na jeho domovskou stránku se můžete dostat pomocí tlačítka "Stránka kurzu (mimo Moodle)" vpravo (pokud existuje).

Digital Image - BE4M33DZO

Kredity 6
Semestry zimní
Zakončení zápočet a zkouška
Jazyk výuky angličtina
Rozsah výuky 2P+2C
Anotace
This course presents an overview of basic methods for digital image processing. It deals with practical techniques that have an interesting theoretical basis but are not difficult to implement. Seemingly abstract concepts from mathematical analysis, probability theory, or optimization come to life through visually engaging applications. The course focuses on fundamental principles (signal sampling and reconstruction, monadic operations, histogram, Fourier transform, convolution, linear and non-linear filtering) and more advanced editing techniques, including image stitching, deformation, registration, and segmentation. Students will practice the selected topics through six implementation tasks, which will help them learn the theoretical knowledge from the lectures and use it to solve practical problems.
Cíle studia
Žádná data.
Osnovy přednášek
1. Monadic Operations
2. Fourier Transform
3. Convolution
4. Linear Filtering
5. Non-linear Filtering
6. Image Editing
7. Image Deformation 1
8. Image Deformation 2
9. Image Registration 1
10. Image Registration 2
11. Image Registration 3
12. Image Segmentation 1
13. Image Segmentation 2
14. Reserved
Osnovy cvičení
1. Introduction to Matlab
2. Monadic Operations 1
3. Monadic Operations 2
4. Fourier Transform 1
5. Fourier Transform 2
6. Linear and Non-linear Filtering 1
7. Linear and Non-linear Filtering 2
8. Image Editing 1
9. Image Editing 2
10. Image Registration 1
11. Image Registration 2
12. Image Segmentation 1
13. Image Segmentation 2
14. Credits
Literatura
1. Gonzalez R. C., Woods R. E.: Digital Image Processing (3rd Edition), Prentice Hall, 2008.
2. Goshtasby A. A.: Image Registration: Principles, Tools and Methods, Springer, 2012.
3. He J., Kim C.-S., Kuo C.-C. J.: Interactive Segmentation Techniques: Algorithms and Performance Evaluation, Springer, 2014.
4. Paris S., Kornprobst P., Tumblin J., Durand F.: Bilateral Filtering: Theory and Applications, Now Publishers, 2009.
5. Pratt W.: Digital Image Processing (3rd Edition), John Wiley, 2004.
6. Radke R. J.: Computer Vision for Visual Effects, Cambridge University Press, 2012.
7. Svoboda, T., Kybic, J., Hlaváč, V.: Image Processing, Analysis and Machine Vision. The MATLAB companion, Thomson Learning, Toronto, Canada, 2007.
8. Šonka M., Hlaváč V., Boyle R.: Image Processing, Analysis and Machine vision (3rd Edition), Thomson Learning, 2007.

Požadavky
It is expected that the student is familiar with calculus, linear algebra, probability and statistics to the depth taught at FEL CVUT.