Computer Vision 1 (Winter Term 2024/2025)
Overview
- Course (2/2/0) consisting of:
- Lectures in TOE/0317/H (Mommsenstr. 12) on Mondays, 11:10–12:40
- Exercise groups
- In APB-E065 on Tuesdays, 13:00–14:30
- In APB-E065 on Tuesdays, 14:50–16:20
- In APB-E067 on Thursdays, 11:10–12:40
- In APB-E067 on Thursdays, 13:00–14:30
- Self-study
- Final Examination
- Lecturer: Bjoern Andres
- Teaching Assistant: Jannik Presberger
- Enrolment (OPAL). Additional rules for enrolment may apply, depending on the study programme.
- Forum
Contents
- Lectures
- Introduction
- Color spaces
- Operators on digital images
- Digital images
- Point operators
- Linear operators (esp. convolution)
- Non-linear operators
- Edge and corner detection
- Classification of digital images
- Logistic regression
- Deep learning (basics)
- Pixel classification
- Excursus: Minimum st-cut problem and maximum st-flow problem
- Decomposition of digital images
- Multicut problem
- Local search algorithms
- Semantic segmentation of digital images
- Node labeling multicut problem
- Local search algorithms
- Multiple object recognition in digital images
- Node labeling multicut problem
- Single object recognition in digital images
- Partial quadratic assignment problem
- Multiple object tracking in digital images
- Constrained multicut problem
- Single object tracking in digital images
- Coupled partial quadratic assignment problems
- Algorithms
- Linear and integer optimization for computer vision
- LP relaxations and lower bounds
- Simplex algorithm
- Branch-and-bound
- Branch-and-cut