Study programme 2022-2023Français
Computer Vision & Machine Intelligence 
Programme component of Master's in Electrical Engineering (MONS) (day schedule) à la Faculty of Engineering

CodeTypeHead of UE Department’s
contact details
Teacher(s)
UI-M1-IRELEC-201-MCompulsory UEGOSSELIN BernardF105 - Information, Signal et Intelligence artificielle
  • GOSSELIN Bernard
  • MANCAS Matei

Language
of instruction
Language
of assessment
HT(*) HTPE(*) HTPS(*) HR(*) HD(*) CreditsWeighting Term
  • Anglais
Anglais, Français242400044.001st term

AA CodeTeaching Activity (AA) HT(*) HTPE(*) HTPS(*) HR(*) HD(*) Term Weighting
I-ISIA-005Computer Vision & Machine Intelligence 2424000Q1100.00%

Programme component
Corequis

Objectives of Programme's Learning Outcomes

  • Imagine, implement and operate systems/solutions/software to address a complex problem in the field of electrical engineering as a source of information by integrating needs, contexts and issues (technical, economic, societal, ethical and environmental).
    • Identify complex problems to be solved and formulate the specifications by integrating client needs, contexts and issues (technical, economic, societal, ethical and environmental).
    • Based on modelling and experimentation, design one or more systems/solutions/software addressing the problem raised; evaluate them in light of various parameters of the specifications.
    • Implement a chosen system/solution/software in the form of a drawing, a schema, a flowchart, an algorithm, a plan, a model, a prototype, software and/or digital model.
    • Evaluate the approach and results for their adaptation (tests, measurements, optimisation and quality).
  • Mobilise a structured set of scientific knowledge and skills and specialised techniques in order to carry out electrical engineering missions, using their expertise and adaptability.
    • Master and appropriately mobilise knowledge, models, methods and techniques specific to electrical engineering.
    • Analyse and model a problem by critically selecting theories and methodological approaches (modelling, calculations), and taking into account multidisciplinary aspects.
    • Identify and discuss possible applications of new and emerging technologies in the field of electrical engineering.
    • Assess the validity of models and results in view of the state of science and characteristics of the problem.
  • Communicate and exchange information in a structured way - orally, graphically and in writing, in French and in one or more other languages - scientifically, culturally, technically and interpersonally, by adapting to the intended purpose and the relevant public.
    • Master technical English in the field of electrical engineering.

Learning Outcomes of UE

develop image processing techniques, together with a critical analysis of the problem;
apply image coding, analysis, segmentation adn feature extraction techniques
apply classification and machine learning techniques (deep learning)

UE Content: description and pedagogical relevance

Image Processing, Image acquisition; lowlevel processing, filtering, transforms; image segmentation and registration;
Image Coding, Deep Learning

Prior Experience

fundamentals of signal processing; probability and statistics

Type of Teaching Activity/Activities

AAType of Teaching Activity/Activities
I-ISIA-005
  • Cours magistraux
  • Travaux pratiques
  • Projet sur ordinateur
  • Etudes de cas

Mode of delivery

AAMode of delivery
I-ISIA-005
  • Hybrid

Required Learning Resources/Tools

AARequired Learning Resources/Tools
I-ISIA-005Not applicable

Recommended Learning Resources/Tools

AARecommended Learning Resources/Tools
I-ISIA-005Not applicable

Other Recommended Reading

AAOther Recommended Reading
I-ISIA-005Not applicable

Grade Deferrals of AAs from one year to the next

AAGrade Deferrals of AAs from one year to the next
I-ISIA-005Authorized

Term 1 Assessment - type

AAType(s) and mode(s) of Q1 assessment
I-ISIA-005
  • Oral examination - Face-to-face

Term 1 Assessment - comments

AATerm 1 Assessment - comments
I-ISIA-005Not applicable

Resit Assessment - Term 1 (B1BA1) - type

AAType(s) and mode(s) of Q1 resit assessment (BAB1)
I-ISIA-005
  • N/A - Néant

Term 3 Assessment - type

AAType(s) and mode(s) of Q3 assessment
I-ISIA-005
  • Production (written work, report, essay, collection, product, etc.) - To be submitted in class

Term 3 Assessment - comments

AATerm 3 Assessment - comments
I-ISIA-005Not applicable
(*) HT : Hours of theory - HTPE : Hours of in-class exercices - HTPS : hours of practical work - HD : HMiscellaneous time - HR : Hours of remedial classes. - Per. (Period), Y=Year, Q1=1st term et Q2=2nd term
Date de dernière mise à jour de la fiche ECTS par l'enseignant : 10/05/2022
Date de dernière génération automatique de la page : 20/06/2023
20, place du Parc, B7000 Mons - Belgique
Tél: +32 (0)65 373111
Courriel: info.mons@umons.ac.be