4 ECTS credits
105 h study time

Offer 1 with catalog number 4016979ENR for all students in the 1st semester at a (E) Master - advanced level.

Semester
1st semester
Enrollment based on exam contract
Impossible
Grading method
Grading (scale from 0 to 20)
Can retake in second session
Yes
Taught in
English
Partnership Agreement
Under interuniversity agreement for degree program
Faculty
Faculteit Ingenieurswetenschappen
Department
Electronics and Informatics
Educational team
Hichem Sahli (course titular)
Activities and contact hours
18 contact hours Lecture
12 contact hours Seminar, Exercises or Practicals
36 contact hours Independent or External Form of Study
Course Content

The goal of computer vision is to develop the theoretical and algorithmic basis by which useful information about the world can be automatically extracted and analyzed from a single image or a set of images. Since images are two-dimensional projections of the three-dimensional world, the information is not directly available and must be recovered. This is a very difficult problem given that the inversion is a many-to-one mapping. To recover the information, knowledge about the objects in the scene and projection geometry is required. This course will cover the fundamentals of Computer Vision. The field draws heavily on many subjects including digital image processing, artificial intelligence and computer graphics. The objectives are to develop your understanding of the basic principles and techniques of image understanding, and to develop your skills in the design and implementation of computer vision software.

Course Content:

Refresher on Linear Algebra and Optimization. Basic concepts, terminology, theories, models and methods in the field of Computyer vision. Basic methods of Inverse Problem in computer vision related to 3D reconstruction from Stereo, Motion and Shading as well as Structured Light and Time-of-Flight. A short introduction to data-driven computer vision model - Deep Stereo and Depp Photometric Stereo

Course material
Digital course material (Recommended) : Computer Vision:, Algorithms and Applications, R. Szeliski, freely available online: http://szeliski.org/Book/, Springer-Verlag, 2011
Additional info

not applicable

Learning Outcomes

General competencies

  • Understand and master basic knowledge, theories and methods in computer vision.
  • Implement basic computer vision algorithms
  • Develop and evaluate solutions to problems in computer
  • Identify, formulate and apply computer vision techniques for solving practical problems.
  • Critically review and assess scientific literature in the field and apply theoretical knowledge to identify the novelty and practicality of proposed methods.
  • Demonstrate awareness of the current key research issues in computer vision

Grading

The final grade is composed based on the following categories:
Oral Exam determines 75% of the final mark.
PRAC Lab Work determines 25% of the final mark.

Within the Oral Exam category, the following assignments need to be completed:

  • Oral Exam with a relative weight of 75 which comprises 75% of the final mark. This is a mid-term test.

Within the PRAC Lab Work category, the following assignments need to be completed:

  • WPO with a relative weight of 25 which comprises 25% of the final mark. This is a mid-term test.

Additional info regarding evaluation

Oral examination: 75%

Exercises: 25%

Allowed unsatisfactory mark
The supplementary Teaching and Examination Regulations of your faculty stipulate whether an allowed unsatisfactory mark for this programme unit is permitted.

Academic context

This offer is part of the following study plans:
Master of Electronics and Information Technology Engineering: Standaard traject (only offered in Dutch)
Master of Photonics Engineering: Standaard traject (only offered in Dutch)
Master of Applied Sciences and Engineering: Applied Computer Science: Standaard traject (only offered in Dutch)
Master in Applied Sciences and Engineering: Applied Computer Science: Standaard traject
Master in Applied Sciences and Engineering: Computer Science: Artificial Intelligence (only offered in Dutch)
Master in Applied Sciences and Engineering: Computer Science: Multimedia (only offered in Dutch)
Master in Applied Sciences and Engineering: Computer Science: Software Languages and Software Engineering (only offered in Dutch)
Master in Applied Sciences and Engineering: Computer Science: Data Management and Analytics (only offered in Dutch)
Master of Applied Sciences and Engineering: Computer Science: Artificial Intelligence
Master of Applied Sciences and Engineering: Computer Science: Multimedia
Master of Applied Sciences and Engineering: Computer Science: Software Languages and Software Engineering
Master of Applied Sciences and Engineering: Computer Science: Data Management and Analytics
Master of Photonics Engineering: On campus traject
Master of Photonics Engineering: Online/Digital traject
Master of Electrical Engineering: Standaard traject BRUFACE J
Master of Teaching in Science and Technology: computerwetenschappen (120 ECTS, Etterbeek) (only offered in Dutch)