Application of photogrammetry and remote sensing methods for mapping and Earth observation.
Learning objective
Learn how to apply photogrammetry, image analysis and machine learning to mapping tasks; hands-on experience in implementing automatic image analysis methods, and in judging their results.
Content
Preprocessing of satellite images, atmospheric correction; extraction of features (radiometric indices, texture descriptors, etc.) from raw image intensities; semantic image segmentation (e.g., cloud masking); physical parameter estimation (e.g., vegetation height); practical deployment of geometric and semantic computer vision and image analysis methods for mapping; assessment of prediction results
Prerequisites / Notice
basic knowledge of photogrammetry, image processing and machine learning
Competencies
Subject-specific Competencies
Concepts and Theories
assessed
Techniques and Technologies
assessed
Method-specific Competencies
Analytical Competencies
assessed
Decision-making
assessed
Problem-solving
assessed
Project Management
fostered
Social Competencies
Communication
assessed
Cooperation and Teamwork
fostered
Personal Competencies
Creative Thinking
assessed
Critical Thinking
fostered
Performance assessment
Performance assessment information (valid until the course unit is held again)
Repetition only possible after re-enrolling for the course unit.
Additional information on mode of examination
During the course, student groups will implement several image analysis tasks, and present their projects in class. The grade will be determined by the submitted assignments and the associated presentations.
Learning materials
No public learning materials available.
Only public learning materials are listed.
Groups
No information on groups available.
Restrictions
There are no additional restrictions for the registration.