Image Processing and Computer Vision

2022/2023

Recommended prerequisite for participation in the module

The module builds upon knowledge obtained in the modules Linear algebra and Statistics

Content, progress and pedagogy of the module

Cameras capture visual data from the surrounding world. Building systems which can automatically process such data requires computer vision methods. Students who complete the module will understand the nature of digital images and video and have an inside into relevant theories and methods within computer vision and an understanding of their applicability.

Learning objectives

Knowledge

  • Must have knowledge about the primary parameters of a camera system
  • Must have knowledge about the representation and compression of digital images and video signal
  • Must be able to understand the general framework of image processing as well as the basic point and neighborhood operations, i.e., binarization, color processing, BLOB analysis and filtering
  • Must be able to explain the principles behind invariant feature point descriptors such as SIFT and Harris corners.
  • Must have knowledge of different motion analysis methods, such as background subtraction and optical flow
  • Must be able to understand the tracking frameworks such as the Kalman filter, mean-shift and the particle filter
  • Must be able to understand different shape analysis methods such as active-shape models, procrustes, Hungarian method

Skills

  • Must be able to apply stereo vision to generate 3D date from two or more cameras. This implies projective geometry, camera calibration, epipolar geometry, correspondence and triangulation
  • Must be able to apply advanced 2D segmentation methods such as Hough transform, compound morphology, and histogram-of-oriented histograms.
  • Must be able to demonstrate understanding of error propagation techniques as a tool for performance characterization of computer vision based solutions

Competences

  • Must be able to learn further computer vision methods and theories, and select an appropriate solution for a given problem

Type of instruction

As described in ยง 17.

Exam

Exams

Name of examImage Processing and Computer Vision
Type of exam
Written or oral exam
ECTS5
Assessment7-point grading scale
Type of gradingInternal examination
Criteria of assessmentThe criteria of assessment are stated in the Examination Policies and Procedures

Facts about the module

Danish titleBilledbehandling og computervision
Module codeESNVGISK2K1A
Module typeCourse
Duration1 semester
SemesterSpring
ECTS5
Language of instructionEnglish
Empty-place SchemeYes
Location of the lectureCampus Aalborg
Responsible for the module

Organisation

Study BoardStudy Board of Electronics and IT
DepartmentDepartment of Electronic Systems
FacultyThe Technical Faculty of IT and Design