Valid for: 2024/25
Faculty: Faculty of Engineering LTH
Decided by: PLED F/Pi
Date of Decision: 2024-04-15
Effective: 2024-05-08
Main field: Machine Learning, Systems and Control
Depth of study relative to the degree requirements: Second cycle, in-depth level of the course cannot be classified
Main field: Virtual Reality and Augmented Reality
Depth of study relative to the degree requirements: Second cycle, in-depth level of the course cannot be classified
Mandatory for: MMSR1, MVAR1
Elective for: BME4-sbh, BME4-bdr, C5, D4-bg, E4-mt, E4-bg, F4, F4-bg, F4-bm, L5-gi, Pi4-biek, Pi4-bam
Language of instruction: The course will be given in English on demand
The main aim of the course is to give a basic introduction to theory and mathematical methods used in image analysis, to an extent that will allow the student to handle industrial image processing problems. In addition the aim is to help the student develop his or her ability in problem solving, both with or without a computer. A further aim is to prepare the student for further studies in e.g. computer vision, multispectral image analysis and statistical image analysis.
Knowledge and understanding
For a passing grade the student must
Competences and skills
For a passing grade the student must
Basic mathematical concepts: Image transforms, Discrete Fourier Transform, Fast Fourier Transform.
Image enhancement: Grey level transforms, filtering.
Image restoration: Filterings, inverse methods.
Scale space theory: Continuous versus discrete theory, interpolation.
Extraction of special features: Filtering, edge and corner detection.
Segmentation: graph-methods, active contours, mathematical morphology.
Bayesian image handling: Maximum A Posterori (MAP) estimations, simulation.
Pattern recognition: Classification, SVM (Support Vector Machine), Principal Component Analysis (PCA), learning.
Registration
Machine Learning: Training, testing, generalization, hypothesis spaces.
Grading scale: TH - (U, 3, 4, 5) - (Fail, Three, Four, Five)
Assessment: Compulsory assignments comprising both theory and computer implementations. Approved results on these are enough to pass the course. To get a higher grade, a written and an oral test are required.
The examiner, in consultation with Disability Support Services, may deviate from the regular form of examination in order to provide a permanently disabled student with a form of examination equivalent to that of a student without a disability.
Modules
Code: 0117. Name: Image Analysis.
Credits: 7.5. Grading scale: TH - (U, 3, 4, 5).
Assumed prior knowledge:
FMAF05 Systems and Transforms, or similar (for example FMAF10 Applied Mathematics - Linear Systems).
The number of participants is limited to: 145
Selection: Incoming qualified exchange students have priority to 10 places. The ranking among such applicants is performed by the course coordinator based on relevant courses taken. Among the remaining applicants priority is given according to the number of completed university credits within the program. Priority is given to students enrolled on programmes that include the course in their curriculum. Among such students place is guaranteed to students in the Master's Programmes in Machine Learning, Systems and Control and in Virtual Reality and Augmented Reality, for whom the course is compulsory.
Kursen överlappar följande kurser:
FMA170
FMA172
MATC20
Teacher: Magnus Oskarsson,
Magnus.Oskarsson@math.lth.se
Director of studies: Anders Holst,
studierektor@math.lth.se
Course administrator: Studerandeexpeditionen,
expedition@math.lth.se
Course homepage: https://canvas.education.lu.se/courses/20289