UnivIS
Informationssystem der Friedrich-Alexander-Universität Erlangen-Nürnberg © Config eG 
FAU Logo
  Sammlung/Stundenplan    Modulbelegung Home  |  Rechtliches  |  Kontakt  |  Hilfe    
Suche:      Semester:   
ACHTUNG: seit 15.06.2022 werden Lehrveranstaltungen nur noch über Campo verwaltet. Diese Daten in UnivIS sind nicht mehr auf aktuellem Stand!
 
 Darstellung
 
Druckansicht

 
 
Artificial Intelligence (Master of Science) >>

  Medical Image Processing for Diagnostic Applications (VHB-Kurs)

Dozentinnen/Dozenten
Prof. Dr.-Ing. habil. Andreas Maier, Luis Carlos Rivera Monroy, M. Sc., Celia Martín Vicario, M. Sc., Manuela Meier, M. Sc., Arpitha Ravi, M. Sc.

Angaben
Vorlesung
4 SWS, ECTS-Studium, ECTS-Credits: 5, Sprache Englisch
Zeit und Ort: n.V.

Studienfächer / Studienrichtungen
WPF INF-MA ab 1
WPF INF-BA-V-ME ab 5
PF CE-MA-TA-IT ab 1
WPF IuK-MA-MMS-INF ab 1
WPF ICT-MA-MPS 1-4
WPF MT-MA-BDV ab 1
WPF MT-BA ab 5
WF CME-MA 1-4
WPF AI-MA ab 1

Voraussetzungen / Organisatorisches
Requirements: mathematics for engineering

Organization: This is an online course of Virtuelle Hochschule Bayern (VHB). Go to https://www.vhb.org to register to this course. FAU students register for the written exam via meinCampus.

Inhalt
Medical imaging helps physicians to take a view inside the human body and therefore allows better treatment and earlier diagnosis of serious diseases.

However, as straightforward as the idea itself is, so diversified are the technical difficulties to overcome when implementing a clinically useful imaging device.

We begin this course by discussing all available modalities and the actual imaging goals which highly affect the imaging result.

Some modalities produce very noisy results, but there are multiple other artifacts that show up in raw acquisition data and have to be dealt with. We address these issues in the chapter preprocessing and show how to compensate for image distortions, how to interpolate defect pixels, and finally correct bias fields in magnetic resonance images.

The largest portion of this course covers the theory of medical image reconstruction. Here, from a set of projections from different viewing angles a 3-D image is merged that allows a definite localization of anatomical and pathological features. Following roughly the historical development of CT devices, we study the process from parallel beam to fan beam geometry and include a discussion of phantoms as a tool for calibration and image quality assessment. We then move forward and learn about reconstruction in 3-D. Since the system matrix often grows in dimensions such that many direct solvers become infeasible, we also discuss pros and cons of iterative methods.

In the final chapter, image registration is introduced as the concept of computing the mapping that maps the content of one image to another. Two different acquisitions usually result in images that are at least rotated and translated against each other. Image registration forms the set of tools that we need to match certain image features in order to align both images for further processing, image improvement or image overlays.
(erwartete Hörerzahl original: 100, fixe Veranstaltung: nein)

ECTS-Informationen:
Title:
Medical Image Processing for Diagnostic Applications (VHB course)

Credits: 5

Zusätzliche Informationen
Schlagwörter: Mustererkennung, Medizinische Bildverarbeitung
Erwartete Teilnehmerzahl: 100, Maximale Teilnehmerzahl: 150
www: http://www5.cs.fau.de/lectures/ss-20/medical-image-processing-for-diagnostic-applications-vhb-kurs-mipda/
Für diese Lehrveranstaltung ist eine Anmeldung erforderlich.
Die Anmeldung erfolgt über: vhb

Verwendung in folgenden UnivIS-Modulen
Startsemester WS 2022/2023:
Diagnostic Medical Image Processing (VHB-Kurs) (DMIP-VHB)

Institution: Lehrstuhl für Informatik 5 (Mustererkennung)
UnivIS ist ein Produkt der Config eG, Buckenhof