lunduniversity.lu.se

Third-Cycle Courses

Faculty of Engineering | Lund University

Details for Course FMA325F Advanced Topics in Learning-based Computer Vision

Printable view

General
  • FMA325F
  • Temporary
Course Name
  • Advanced Topics in Learning-based Computer Vision
Course Extent
  • 7.5
Type of Instruction
  • Third-cycle course
Administrative Information
  • 7151 (Centre of Mathematical Sciences / Mathematics)
  • 2024-05-07
  • Maria Sandsten

Current Established Course Syllabus

General
  • English
  • If sufficient demand
Aim
  • This course will cover advanced topics in computer vision with a focus on machine learning,
Contents
  • The course is focused on machine learning methods and paradigms that are used in modern computer vision.
Knowledge and Understanding
  • For a passing grade the doctoral student must
  • Understand advanced concepts and techniques in machine learning that are used in computer vision.
    Understand and discuss the current state-of-the-art and future directions in machine learning-based methods for computer vision.
    Be familiar with common network architectures, losses and datasets used in the field.
Competences and Skills
  • For a passing grade the doctoral student must
  • Be able to apply common machine learning techniques used in computer vision.
    Be able to analyse and critique recent research papers in the field.
    Be able to apply and understand common evaluation methodologies and benchmarking approaches.
Judgement and Approach
  • For a passing grade the doctoral student must
Types of Instruction
  • Seminars
  • Self-study literature review
Examination Formats
  • Seminars given by participants
  • Failed, pass
Admission Requirements
Assumed Prior Knowledge
  • The course participants are assumed to have research experience in a topic relevant for the course.
Selection Criteria
  • The course is limited to 12 participants.

    Preference is given to students admitted to the research subjects Mathematics (TEFMAF00), Numerical Analysis (TEEDAFNA) och Mathematical Statistics (TEFMSF00).
Literature
  •  
  • Scientific articles that highlight both the history and current research frontier within the field.
Further Information
Course code
  • FMA325F
Administrative Information
  • 2024-05-07
  • Maria Sandsten

All Established Course Syllabi

1 course syllabus.

Valid from First hand in Second hand in Established
Autumn 2024 2024‑04‑25 10:47:09 2024‑04‑29 10:42:06 2024‑05‑07

Current or Upcoming Published Course Occasion

No matching course occasion was found.

All Published Course Occasions

1 course occasion.

Course syllabus valid from Start Date End Date Published
Autumn 2024 2024‑11‑04 (approximate) 2025‑01‑19

Printable view