Skriv ut Lukk vindu


 

Høst 2024

TEK-3601 Machine Vision - 10 stp


The course is administrated by

Institutt for automasjon og prosessteknologi

Type of course

The course is available as a singular course. The course is also available to exchange students and Fulbright students.

Course overlap

TEK-3016 Machine Vision 10 ects

Course contents

Introduction to machine vision: fundamentals of image formation and camera parameters. An overview of Image sensing pipeline, Demosaicing, and Compression.

Fundamentals of supervised learning, unsupervised learning, reinforcement learning, and ethics in Deep learning.

Training deep learning models, loss functions, gradients, initialization, evaluation of performance in Deep learning.

Fundamentals of technical and scientific report writing with emphasis on performing experiments and data analysis.

Fundamentals of programming using Python for Deep learning applications.


Admission requirements

A relevant undergraduate Bachelor Engineering program with minimum 25 credits mathematics, 5 credits statistics, 7,5 credits physics.

Application code: 9371

FYS-2010 Image Analysis, FYS-2006 Signal Processing or FYS-2021 Machine Learning is recommended.


Objective of the course

Knowledge:

This interdisciplinary course should give the candidate a good understanding of fundamentals of machine vision with special focus on application of deep learning in a case study or application.

Skills:


Language of instruction

English

Teaching methods

Lectures, workshops and laboratory work.