02979 Summer school on missing data, augmentation and generative models

2023/2024

This course is aimed at PhD students and there is a participation fee. See the homepage for details.
Kursusinformation
Summer school on missing data, augmentation and generative models
Engelsk
3
Ph.d., Fagligt fokuseret kursus
Kurset udbydes som enkeltfag
The course is held at a remote location in week 33.
See homepage for details.
The course is held at a remote location in week 33. See homepage for details.
A mixture of invited lectures and computer based programming exercises.
[Kurset følger ikke DTUs normale skemastruktur]
Aftales med underviser, Aftales med underviser, The evaluation is performed on the last day of the summer school.
Bedømmelse af øvelser
The student is evaluated by bringing a poster and by the evaluation of a team presentation of the exercises.
Alle hjælpemidler er tilladt
bestået/ikke bestået , intern bedømmelse
A good background in machine learning and deep learning. Python programming experience.
Minimum 30 Maksimum: 110
Rasmus Reinhold Paulsen , Lyngby Campus, Bygning 324, Tlf. (+45) 4525 3423 , rapa@dtu.dk
01 Institut for Matematik og Computer Science
Datalogisk Institut, Københavns Universitet
Sektion for medieteknologi, Aalborg Universitet
https://missing-data.compute.dtu.dk/
På instituttet
Juni 2023
Registration to the summer school should be done using the homepage.
Kontakt underviseren for information om hvorvidt dette kursus giver den studerende mulighed for at lave eller forberede et projekt som kan deltage i DTUs studenterkonference om bæredygtighed, klimateknologi og miljø (GRØN DYST). Se mere på http://www.groendyst.dtu.dk
Overordnede kursusmål
The overall goal of the course is to provide the student with an overview of missing data and their origins. After the course, the student will be able implement and evaluate common and advanced methods to deal with missing data.
Læringsmål
En studerende, der fuldt ud har opfyldt kursets mål, vil kunne:
  • Describe the typical types of missing data
  • Describe reasons and origins of missing data
  • Give an overview of current state-of-the-art methods to deal with missing data
  • Describe the concept of generative models and their typical use
  • Give an overview of state-of-the-art approaches to data augmentation
  • Implement and test a Python based framework for dealing with missing data
  • Implement and test a Python based framework for data augmentation
  • Implement and test a Python based framework for generative modelling
Kursusindhold
Missing data is a common problem in image processing and in general AI based methods. The source can be, for example, occlusions in 3D computer vision problems, poorly dyed tissue in biological applications, missing data points in long-term observations, or perhaps there is just too little annotated data for a deep-learning model to properly converge. On this Ph. D. summer school, you will learn some of the modern approaches to handling the above-mentioned problems in a manner compatible with modern machine learning methodology.

This summer school will give an introduction to the state-of-the-art for handling too little or missing data in image processing tasks. The topics include data augmentation, density estimation, and generative models. The course will include project work, where the participants make a small programming project relating their research to the summer school’s topics.
Litteraturhenvisninger
Please see the homepage for details.
Sidst opdateret
13. marts, 2024