Information on individual educational components (ECTS-Course descriptions) per semester | |
Degree programme: | Master Computer Science |
Type of degree: | FH MasterĀ“s Degree Programme |
Full-time | |
Summer Semester 2024 | |
Course unit title | Computer Vision |
Course unit code | 024913020505 |
Language of instruction | English |
Type of course unit (compulsory, optional) | Elective |
Semester when the course unit is delivered | Summer Semester 2024 |
Teaching hours per week | 2 |
Year of study | 2024 |
Level of course unit (e.g. first, second or third cycle) | Second Cycle (Master) |
Number of ECTS credits allocated | 3 |
Name of lecturer(s) | Sebastian HEGENBART |
Prerequisites and co-requisites |
Basics in machine learning, statistics, probability theory and linear algebra. |
Course content |
Computer Vision deals with the automated analysis and interpretation of visual data. This scientific field has gained a lot of traction due to the impressive success of deep-learning within the last few years and builds the basis for a plethora of exciting modern applications. In this course the principles of Computer Vision are covered:
Examples and projects will be developed in python using frameworks such as scikit-learn, openCV, numpy and keras (tensorflow). |
Learning outcomes |
The students are able to:
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Planned learning activities and teaching methods |
Lectures and mini-projects in groups. |
Assessment methods and criteria |
Written exam 75% For a positive grade, a minimum of 50% of the possible points must be achieved in each part of the examination. |
Comment |
None
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Recommended or required reading |
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Mode of delivery (face-to-face, distance learning) |
Face-to-Face with selected online elements. |
Summer Semester 2024 | go Top |