Advanced image processing and analysis
| Keywords |
| Classification |
Keyword |
| CNAEF |
Informatics Sciences |
Instance: 2023/2024 - 2S 
Cycles of Study/Courses
| Acronym |
No. of Students |
Study Plan |
Curricular Years |
Credits UCN |
Credits ECTS |
Contact hours |
Total Time |
| MVCOMP |
10 |
Syllabus |
1 |
- |
6 |
42 |
162 |
Teaching language
English
Objectives
- Study and application of advanced digital image processing techniques.
- Study and application of advanced techniques of digital image analysis.
- Analysis of real problems and design and development of solutions based on advanced image processing and analysis technologies.
- Evaluation of the adequacy of the methodologies applied to specific problems.
Learning outcomes and competences
Upon completion of this course, students will:
- understand and be able to explain the basic concepts of advanced digital image processing techniques and advanced techniques of digital image analysis;
- have knowledge of existing methods for visual data analysis and be able to apply them in practical situations;
- acquire skills for the deveobter uma classificação mínima de 40% na avaliação distribuída.lopment of solutions based on advanced image processing and analysis technologies;
- be able to analyze and understand selected scientific papers in image processing and analysis and computer vision.
Working method
Presencial
Program
- Advanced image processing techniques. Advanced denoising. Total variation.
Advanced edge detection (e.g. bilateral filter, anisotropic diffusion, phase congruence).
- Advanced segmentation (deformable models, level-set methods, Markov Random Fields, graph cuts, dynamic programming, etc.).
Learning-based segmentation (active shape/appearance models).
- Salience and attention models.
- Selected topics on advanced image processing and analysis (detection, semantic segmentation, multi-view enhancement, superresolution, inpainting, colouring, photo stitching, background removal, etc.).
- Advanced applications of image processing and analysis.
Mandatory literature
Richard Szeliski;
Computer vision. ISBN: 978-1-84882-935-0
Complementary Bibliography
Adrian Kaehler;
Learning OpenCV 3. ISBN: 978-1-491-93799-0
David A. Forsyth;
Computer vision. ISBN: 0-13-085198-1
Teaching methods and learning activities
The teaching-learning process will be based on a theoretical-practical. There will be a presentation and discussion of the course topics and resolution of exercises using learning based on the analysis and resolution of practical cases. Additionally, individual projects will be developed where the studied computer vision methods will be applied.
Evaluation Type
Distributed evaluation without final exam
Assessment Components
| Designation |
Weight (%) |
| Teste |
20,00 |
| Trabalho prático ou de projeto |
80,00 |
| Total: |
100,00 |
Amount of time allocated to each course unit
| Designation |
Time (hours) |
| Elaboração de projeto |
50,00 |
| Estudo autónomo |
70,00 |
| Frequência das aulas |
42,00 |
| Total: |
162,00 |
Eligibility for exams
Obtain a minimum of 50% in the distributed evaluation classification
Calculation formula of final grade
Final Classification = PR * 0.8 + T * 0.2
PR - projects
T - written tests