MRES.B.02.01 – Selected Topics in image Processing and Computer Vision
MRES.B.02.01 – Selected Topics in image Processing and Computer Vision
Computer vision is perhaps one of the most thrilling fields which combines the concepts of data-driven Machine Learning and image processing. Computer vision exists in numerous applications ranging from Navigation, e.g., by any type of an autonomous vehicle; document analysis and understanding, mixed reality etc. The course contains selected topics in computer vision and pattern recognition.
The module syllabus contains the following topics:
The purpose of the course is to provide the students, besides the principles of processing and analyzing images as two-dimensional signals, the elements of modern data-driven computer vision algorithms for understanding the meaning of images.
Upon successful completion of the course, students are expected to be able to:
Mandatory:
We will assume you have a basic level of expertise in programming, computer science, and mathematics, especially linear algebra and probabilities. For example, if you are unfamiliar with the topics of elementary linear algebra or calculus, then you might want to consider to introduce yourself to them: without these tools, most likely you will struggle with the course.
Concretely, we will assume that you are familiar with the following topics; they will not be reviewed in class:
Desirable:
Python-PyTorch: You should either have prior experience, or be able to quickly learn this exciting language and machine learning library.
Student evaluation comes from
Currently, there are no required textbooks. The following books may be found quite useful:
RESEARCH ARTICLES
The students are encouraged to search and review the computer vision literature among the top-notch Journals and conferences of image processing and computer vision such as those organized by:
TOOLS
WEBSITES
Instructor(s): Elias ZOIS