183.663 Deep Learning for Visual Computing
This course is in all assigned curricula part of the STEOP.
This course is in at least 1 assigned curriculum part of the STEOP.

2020S, VU, 2.0h, 3.0EC
TUWEL

Properties

  • Semester hours: 2.0
  • Credits: 3.0
  • Type: VU Lecture and Exercise

Learning outcomes

After successful completion of the course, students are able to develop and apply deep learning methods for automatic image analysis (e.g. for classification of images or detection and differentiation of persons). 

Subject of course

Deep learning for automatic image analysis:

* Brief recap of Computer Vision and Image Processing
* Machine Learning: overview, parametric models, iterative optimization
* Feedforward Neural Networks, backpropagation
* Convolutional Neural Networks for classification, detection, and segmentation
* Software libraries and practical aspects
* Preprocessing, data augmentation, regularization, visualizations
* Guest lectures on medical applications and ethical aspects

The contents presented in the lecture will be applied in exercises.

Teaching methods

Lecture and individual programming tasks.

Mode of examination

Written

Additional information

ECTS breakdown: 3 ECTS = 75h

16h lecture
34h programming exercises
24h exam preparations
1h exam
---
75h

Lecturers

Institute

Course dates

DayTimeDateLocationDescription
Thu12:00 - 14:0005.03.2020 - 12.03.2020Hörsaal 15 VO
Deep Learning for Visual Computing - Single appointments
DayDateTimeLocationDescription
Thu05.03.202012:00 - 14:00Hörsaal 15 VO
Thu12.03.202012:00 - 14:00Hörsaal 15 VO

Examination modalities

Written exam (50%) and compulsory programming exercises (50%).

Exams

DayTimeDateRoomMode of examinationApplication timeApplication modeExam
Wed11:00 - 13:0012.06.2024EI 7 Hörsaal - ETIT written12.05.2024 09:00 - 11.06.2024 09:00TISSDeep Learning for Visual Computing Exam 1

Course registration

Begin End Deregistration end
03.02.2020 00:00 08.03.2020 23:00 09.03.2020 23:00

Precondition

The student has to be enrolled for at least one of the studies listed below

Group Registration

GroupRegistration FromTo
Group 109.03.2020 08:0015.03.2020 23:00
Group 209.03.2020 08:0015.03.2020 23:00
Group 309.03.2020 08:0015.03.2020 23:00
Group 409.03.2020 08:0015.03.2020 23:00
Group 509.03.2020 08:0015.03.2020 23:00
Group 609.03.2020 08:0015.03.2020 23:00
Group 709.03.2020 08:0015.03.2020 23:00
Group 809.03.2020 08:0015.03.2020 23:00
Group 909.03.2020 08:0015.03.2020 23:00
Group 1009.03.2020 08:0015.03.2020 23:00
Group 1109.03.2020 08:0015.03.2020 23:00
Group 1209.03.2020 08:0015.03.2020 23:00
Group 1309.03.2020 08:0015.03.2020 23:00
Group 1409.03.2020 08:0015.03.2020 23:00
Group 1509.03.2020 08:0015.03.2020 23:00
Group 1609.03.2020 08:0015.03.2020 23:00
Group 1709.03.2020 08:0015.03.2020 23:00
Group 1809.03.2020 08:0015.03.2020 23:00
Group 1909.03.2020 08:0015.03.2020 23:00
Group 2009.03.2020 08:0015.03.2020 23:00
Group 2109.03.2020 08:0015.03.2020 23:00
Group 2209.03.2020 08:0015.03.2020 23:00
Group 2309.03.2020 08:0015.03.2020 23:00
Group 2409.03.2020 08:0015.03.2020 23:00
Group 2509.03.2020 08:0015.03.2020 23:00

Curricula

Study CodeObligationSemesterPrecon.Info
066 645 Data Science Mandatory elective
066 926 Business Informatics Not specified
066 926 Business Informatics Mandatory elective
066 932 Visual Computing Mandatory elective

Literature

Preceding courses

Miscellaneous

Language

German