Academic year 2022/2023 |
Supervisor: | prof. RNDr. Miloslav Druckmüller, CSc. | |||
Supervising institute: | ÚM | |||
Teaching language: | Czech or English | |||
Aims of the course unit: | ||||
The aim of the course is to provide students with information about modern mathematical method of image processing. | ||||
Learning outcomes and competences: | ||||
Basic knowledge of classic and digital photography, modern mathematical methods of image processing, image analysis and pattern recognition. | ||||
Prerequisites: | ||||
Real and complex analysis, functional analysis, basic knowledge of programming | ||||
Course contents: | ||||
This course covers the subject of classical and digital photogtaphy, image processing and analysis by means of computer. The course familiarises PhD students with the digital image processing theory and selected topics of image analysis. It focuses on digital images representation and reconstruction, filtration in frequency and spatial domain, noise analysis and filtration, image enhancement, image segmentation, objects analysis and recognition, analysis of multi-spectral images. | ||||
Teaching methods and criteria: | ||||
The course is taught through lectures explaining the basic principles and theory of the discipline. | ||||
Assesment methods and criteria linked to learning outcomes: | ||||
Written exam | ||||
Controlled participation in lessons: | ||||
Missed lessons can be compensated by individual consultations. | ||||
Type of course unit: | ||||
Lecture | 10 × 2 hrs. | optionally | ||
Course curriculum: | ||||
Lecture | 1. Principles of classic and digital photography 2. Numeric image representation, graphics formats, image data compression 3. Images reconstruction, statistical image characteristics 4. Pixel values transforms 5. Convolution, space domain filtration 6. Fourier transform, frequency domain filtration 7. Low-pass and high-pass filters, nonlinear filters 8. Adaptive filters 9. Additive noise - analysis and filtration 10. Impulse noise - analysis and filtration 11. Image segmentation 12. Object analysis 13. Pattern recognition and object classification |
|||
Literature - fundamental: | ||||
1. Pratt, W. K.: Digital Image Processing. Wiley, New York | ||||
2. Starck, J.L. ; Murtagh, F.; Bijaoui, A.: Image Processing and Data Analysis. Cambridge Univesity Press | ||||
Literature - recommended: | ||||
1. Klíma, M.; Bernas, M.; Hozman J.; Dvořák, P.: Zpracování obrazové informace. ČVUT Praha | ||||
2. Druckmüller, M.; Heriban, P._: Digital Image Processing System 5.0. SOFO Brno |
The study programmes with the given course: | |||||||||
Programme | Study form | Branch | Spec. | Final classification | Course-unit credits | Obligation | Level | Year | Semester |
D-ENE-P | full-time study | --- no specialisation | -- | DrEx | 0 | Recommended course | 3 | 1 | W |
D-IME-K | combined study | --- no specialisation | -- | DrEx | 0 | Recommended course | 3 | 1 | W |
D-IME-P | full-time study | --- no specialisation | -- | DrEx | 0 | Recommended course | 3 | 1 | W |
D-ENE-K | combined study | --- no specialisation | -- | DrEx | 0 | Recommended course | 3 | 1 | W |
Faculty of Mechanical Engineering
Brno University of Technology
Technická 2896/2
616 69 Brno
Czech Republic
+420 541 14n nnn
+420 726 81n nnn – GSM Telef. O2
+420 604 07n nnn – GSM T-mobile
Operator: nnnn = 1111