Computer Vision & Pattern Recognition
People
Course director
Assistant
Description
The course covers the following topics: image formation (from both a photometric and geometric perspective), low-level imaging methods (filtering and edge detection), single and multi-view geometry for 3D reconstruction, feature extraction for object recognition. Lectures are accompanied by various examples of applications where these methods apply, and hands-on programming exercise to solve real-world problems.
Objectives
The purpose of the course is to introduce basic problems in image processing, computer vision, and pattern recognition, and to provide the students with an understanding of fundamental principles underlying the most important solutions.
Teaching mode
In presence
Learning methods
The topics will be presented in the form of lectures and tutorials. Homework assignments with theoretical and practical programming exercises will be handed out, graded, and discussed in the tutorials.
Examination information
The course grade is determined by the results of the homework assignments (50%) and the written final exam (50%).
Bibliography
Education
- Master of Science in Artificial Intelligence, Lecture, 1st year
- Master of Science in Computational Science, Lecture, Elective, 1st year
- Master of Science in Computational Science, Lecture, Elective, 2nd year
- Master of Science in Informatics, Lecture, Artificial Intelligence, Elective, 1st year
- Master of Science in Informatics, Lecture, Artificial Intelligence, Elective, 2nd year
- Master of Science in Informatics, Lecture, Geometric and Visual Computing, Elective, 1st year
- Master of Science in Informatics, Lecture, Geometric and Visual Computing, Elective, 2nd year
- PhD programme of the Faculty of Informatics, Lecture, Elective, 1st year (4.0 ECTS)