Course details
Computer Vision
POVa Acad. year 2017/2018 Winter semester 5 credits
Principles and methods of computer vision, methods and principles of image acquiring, preprocessing methods (statistical processing), filtering, pattern recognition, integral transformations - Fourier transform, image morphology, classification problems, automatic classification, D methods of computer vision, open problems of computer vision.
Guarantor
Language of instruction
Completion
Time span
Assessment points
- 51 pts final exam (25 pts written part, 26 pts test part)
- 9 pts mid-term test (test part)
- 40 pts projects
Department
Subject specific learning outcomes and competences
The students will get acquainted with the principles and methods of computer vision. They will learn in more detail selected methods and algorithms of vision and image acquiring. They will also get acquainted with the possibilities of the scanned data processing. Finally, they will learn how to apply the gathered knowledge practically.
The students will improve their teamwork skills, mathematics, and exploitation of the "C" language.
Learning objectives
To get acquainted with the principles and methods of computer vision. To learn in more detail selected methods and algorithms of vision and image acquiring. To get acquainted with the possibilities of the scanned data processing. To learn how to apply the gathered knowledge practically.
Prerequisite knowledge and skills
There are no prerequisites
Study literature
- Russ, J.C.: The IMAGE PROCESSING Handbook, CRC Press, 1995, ISBN 0-8493-2532-3
- Bass, M.: Handbook of Optics, McGraw-Hill, New York, USA, 1995, ISBN 0-07-047740-X
Fundamental literature
- Horn, B.K.P.: Robot Vision, McGraw-Hill, 1988, ISBN 0-07-030349-5
- Hlaváč, V., Šonka, M.: Počítačové vidění, Grada, 1993, ISBN 80-85424-67-3
- Russ, J.C.: The IMAGE PROCESSING Handbook, CRC Press, 1995, ISBN 0-8493-2532-3
- Bass, M.: Handbook of Optics, McGraw-Hill, New York, USA, 1995, ISBN 0-07-047740-X
Syllabus of seminars
- Introduction, basic principles, pre-processing and normalization (highlights)
- Segmentation, color analysis, histogram analysis, clustering
- Texture features analysis and acquiring
- Clusters, statistical methods
- Curves, curve parametrization
- Geometrical shapes extraction, Hough transform, RHT
- Pattern recognition (statistical, structural)
- Classifiers (AdaBoost, neural nets...), automatic clustering
- Detection and parametrization of objects in images
- Geometrical transformations, RANSAC applications
- Motion analysis, object tracking
- 3D methods of computer vision, registration, reconstruction
- Conclusion, open problems of computer vision
Syllabus - others, projects and individual work of students:
- Homeworks (5 runs) at the beginning of semester
- Individually assigned project for the whole duration of the course.
Progress assessment
Study evaluation is based on marks obtained for specified items. Minimimum number of marks to pass is 50.
Controlled instruction
Homeworks, Mid-term test, individual project.
Course inclusion in study plans