UnivIS
Information system of Friedrich-Alexander-University Erlangen-Nuremberg © Config eG 
FAU Logo
  Collection/class schedule    module collection Home  |  Legal Matters  |  Contact  |  Help    
search:      semester:   
 Lectures   Staff/
Facilities
   Room
directory
   Research-
report
   Publications   Internat.
contacts
   Thesis
offers
   Phone
book
 
 
 Layout
 
compact

short

printable version

 
 
class schedule

 
 
 Extras
 
tag all

untag all

export to XML

 
 
 Also in UnivIS
 
course list

lecture directory

 
 
events calendar

job offers

furniture and equipment offers

 
 
Departments >> Faculty of Engineering >> Department Artificial Intelligence in Biomedical Engineering (AIBE) >>

W3-Professur für Image Data Exploration and Analysis

 

Advanced Machine Learning for Anomaly Detection [[AdvMLAD]]

Lecturers:
Bernhard Kainz, Johanna Müller
Details:
Seminar, 2 cred.h, für FAU Scientia Gaststudierende zugelassen
Dates:
to be determined
Fields of study:
WPF DS-MA-AI 1

 

How to teach programming. [TPROG]

Details:
Übungsseminar, 2 cred.h, für FAU Scientia Gaststudierende zugelassen

 
 
tbd.    N.N. 
 

Kolloquium Machine Learning for Health Data Science [Koll-MLHDS]

Lecturer:
Bernhard Kainz
Details:
Kolloquium, 3 cred.h, für FAU Scientia Gaststudierende zugelassen
Dates:
Fri, 12:00 - 15:00, Zoom-Meeting
Contents:
This colloquium is a discussion platform for researches and students interested in machine learning research and image analysis. Our approach is focused on the discussion of recent developments and research papers and students' own research results. This aims at the improvement of presentation and conversation skills and other aspects for example career development, ethics and unconscious bias. The colloquium is open to all interested researchers and students. We will meet mainly on zoom but will also have personal meetings at the various locations of the research group.

 

Kolloquium Normative Representation Learning [KollNormLearn]

Lecturer:
Bernhard Kainz
Details:
Vorlesung, 2 cred.h, für FAU Scientia Gaststudierende zugelassen
Dates:
Wed, 17:00 - 19:00, Zoom-Meeting
Contents:
This colloquium is a discussion platform for researches and students interested in normative machine learning. Our approach is focused on the discussion of recent developments and research papers and students' own research results. This aims at the improvement of presentation and conversation skills and other aspects for example career development, ethics and unconscious bias. The colloquium is open to all interested researchers and students. We will meet mainly on zoom/MS Teams but will also have personal meetings at the various locations of the research group.

 

Medizintechnik II [MT2]

Lecturers:
Florian Knoll, Bernhard Kainz
Details:
Vorlesung, 4 cred.h, ECTS: 3,75, für Anfänger geeignet, für FAU Scientia Gaststudierende zugelassen, This course will be held online. The blackboard exercises will start in the first (!) week (29.4) and the computer exercises in the third week (9.5-13.5). Old lecture videos can be found at https://www.video.uni-erlangen.de/course/id/1022 and all further information can be found on StudOn https://www.studon.fau.de/crs4223415.html
Fields of study:
PF MT-BA 2
Contents:
VORL; 4 SWS; guest listeners; Prof. Dr. Florian Knoll , Prof. Dr. Bernhard Kainz The lecture MT2 is aimed at students of medical technology and is one of the basic lectures in the field of informatics. Methods and devices that process and display the anatomy and function of the body for diagnosis and therapy are explained. Emphasis is placed on understanding and applying basic algorithms of medical imaging, such as segmentation, filtering, and image reconstruction. Modalities presented include X-ray systems, computed tomography (CT), magnetic resonance imaging (MRI), optical coherence tomography (OCT), and ultrasound (US).

StudOn: https://www.studon.fau.de/crs4223415.html

Recommended literature:

 
 
Tue10:15 - 11:45Zoom-Meeting  Knoll, F.
Kainz, B.
 
 

Medizintechnik II Rechnerübung [MT2-RUE]

Lecturers:
Johanna Müller, Florian Knoll, Marc Vornehm, Jinho Kim, Mischa Dombrowski, Bernhard Kainz
Details:
Übung, 2 cred.h, für Anfänger geeignet, für FAU Scientia Gaststudierende zugelassen, This course will be held in person. The exercises will start in the third week (9.-.13.5.)
Fields of study:
PF MT-BA 2
Contents:
In selbstständiger, aber betreuter Projektarbeit werden die Inhalte der Vorlesung direkt angewandt und dadurch vertieft. Dazu erarbeiten die Studierenden eine technische Lösung für eine konkrete medizinische Fragestellung.
Anmeldung zu den Rechnerübungen erfolgt ab dem 29.Apr 2022, 14:00 Uhr via Studon.

 
 
Tue12:00 - 14:0001.155-113 CIP  Tutoren 
 
 
Wed8:00 - 10:0001.155-113 CIP  Tutoren 
 
 
Wed10:00 - 12:0001.155-113 CIP  Tutoren 
 
 
Fri10:00 - 12:0001.155-113 CIP  Tutoren 
 
 
Fri14:00 - 16:0002.151-113 a CIP, 02.151-113 b CIP  Tutoren 
 

Medizintechnik II Tafelübung [MT2-TUE]

Details:
Übung, 2 cred.h, ECTS: 1,25, für Anfänger geeignet, für FAU Scientia Gaststudierende zugelassen, This course will be held in person. Please note that the first meeting will be on Friday 29.4.
Fields of study:
PF MT-BA 2
Contents:
In selbstständiger, aber betreuter Projektarbeit werden die Inhalte der Vorlesung direkt angewandt und dadurch vertieft. Dazu erarbeiten die Studierenden eine technische Lösung für eine konkrete medizinische Fragestellung in gemeinsamer Gruppenarbeit.

 
 
Fri
n.V.
12:15 - 13:45
H8
n.V.
  N.N. 
 

Medizintechnik II Tutorenbesprechung [MT2-TUT]

Lecturers:
Johanna Müller, Nora Gourmelon, Florian Knoll, Bernhard Kainz
Details:
Übung, 2 cred.h
Dates:
Fri, 8:15 - 9:45, 00.151-113

 

Project Representation Learning [PRL]

Lecturers:
Bernhard Kainz, Johanna Müller, Mischa Dombrowski
Details:
Sonstige Lehrveranstaltung, 8 cred.h, ECTS: 10, nur Fachstudium
Dates:
to be determined
Fields of study:
WPF AI-MA ab 1
WPF MT-BA-BV ab 1
WPF INF-BA ab 1
WPF DS-MA-DW ab 1
Prerequisites / Organisational information:
recommended:
Deep Learning ML Prof. Dr. Andreas Maier 2+2 5 x E
Pattern Recognition ML Prof. Dr. Andreas Maier 3+1+2 5 x E
Maschinelles Lernen für Zeitreihen ML Prof. Eskofier, Prof. Oliver Amft, Dr. Ch. Mutschler 2+2+2 7.5 x E
Contents:
Different projects in the area of (deep) representation learning are on offer. These reach from theoretical exploration of new data representation methods to practical evaluation of applications in, e.g., medical image analysis. Example projects will be made available on the website of the IDEA Lab https://idea.tf.fau.eu/. Students may also propose their own projects, which will be coordinated and refined with the module lead during preliminary discussions.
Recommended literature:
A specific reading list will be established at the beginning of each project, general literature is listed below:
Quinn J, McEachen J, Fullan M, Gardner M, Drummy M. Dive into deep learning: Tools for engagement. Corwin Press; 2019 Jul 15. https://d2l.ai/
Goodfellow I, Bengio Y, Courville A, Bengio Y. Deep learning. Cambridge: MIT press; 2016 Nov 18. https://www.deeplearningbook.org/



UnivIS is a product of Config eG, Buckenhof