Digital image
Code | Completion | Credits | Range | Language |
---|---|---|---|---|
AE4M33DZO | Z,ZK | 6 | 2P+2C | English |
- Relations:
- During a review of study plans, the course A4M33DZO can be substituted for the course AE4M33DZO.
- It is not possible to register for the course AE4M33DZO if the student is concurrently registered for or has already completed the course A4M33DZO (mutually exclusive courses).
- It is not possible to register for the course AE4M33DZO if the student is concurrently registered for or has already completed the course BE4M33DZO (mutually exclusive courses).
- It is not possible to register for the course AE4M33DZO if the student is concurrently registered for or has already completed the course B4M33DZO (mutually exclusive courses).
- It is not possible to register for the course AE4M33DZO if the student is concurrently registered for or has previously completed the course A4M33DZO (mutually exclusive courses).
- It is not possible to register for the course AE4M33DZO if the student is concurrently registered for or has previously completed the course B4M33DZO (mutually exclusive courses).
- It is not possible to register for the course AE4M33DZO if the student is concurrently registered for or has previously completed the course BE4M33DZO (mutually exclusive courses).
- The requirement for course AE4M33DZO can be fulfilled by substitution with the course BE4M33DZO.
- Course guarantor:
- Lecturer:
- Tutor:
- Supervisor:
- Department of Cybernetics
- Synopsis:
-
First, the subject teaches how to process two-dimensional image as a signal without interpretation. Image acquisition, linear and nonlinear preprocessing methods and image compression will be studied. Second, image segmentation and registration methods will be taught. Studied topics will be practised on practical examples in order to obtain also practical skills.
- Requirements:
-
It is expected that the student is familiar with calculus, linear algebra, probability and statistics to the depth taught at FEL CVUT.
- Syllabus of lectures:
-
1. Digital image processing vs. computer vision. Objects in images. Digital image. Distance transform. Brightness histogram.
2. Physical foundation of images. Image acquisition from geometric and radiometric point of view.
3. Processing in the spatial domain. Convolution. Correlation. Noise filtration. Linear and nonlinear methods.
4. Fourier transform. Derivation of the sampling theorem. Frequency filtration of images. Image restauration.
5. Brightness and geometric transformations, interpolation. Registration I.
6. Edge detection. Multiscale image processing.
7. Color images and processing of color images.
8. Segmentation I.
9. Segmentation II.
10. Registration II.
11. Image compression.
12. Mathematical morphology.
13. Reserve.
- Syllabus of tutorials:
-
1. MATLAB. Homework 1 assignment (image acquisition).
2. Constultations. Solving the homework.
3. Constultations. Solving the homework.
4. Constultations. Solving the homework.
5. Homework 1 handover. Homework 2 assignment (Fourier transformation).
6. Constultations. Solving the homework.
7. Constultations. Solving the homework.
8. Constultations. Solving the homework.
9. Homework 2 handover. Homework 3 assignment (image segmentation).
10. Constultations. Solving the homework.
11. Constultations. Solving the homework.
12. Consultations. Homework 3 handover.
13. Written test. Presentation of several best student homeworks.
- Study Objective:
- Study materials:
-
1. Šonka, M., Hlaváč, V., Boyle, R.D.: Image processing, analysis and machine vision. 3. vydání, Thomson Learning, Toronto, Canada, 2007.
2. Svoboda, T., Kybic, J., Hlaváč, V.: Image processing, analysis and
machine vision. The MATLAB companion, Thomson Learning, Toronto, Canada, 2007.
- Note:
- Further information:
- http://cw.felk.cvut.cz/doku.php/courses/ae4m33dzo/start
- No time-table has been prepared for this course
- The course is a part of the following study plans: