Zur Merkliste hinzufügen
Zurück

 

43075-01 - Vorlesung: Probabilistic Shape Modelling 6 KP

Semester Frühjahrsemester 2016
Angebotsmuster unregelmässig
Dozierende Marcel Lüthi (marcel.luethi@unibas.ch, BeurteilerIn)
Inhalt Statistical shape models are one of the most important technologies in computer vision and medical image analysis. With this technology, the computer learns the characteristic shape variations of an object or organ. The model resulting from this analysis may then be used in implant design, image analysis, surgery planning and many other fields.

In this course, you will get insights from mathematics, statistics and machine learning, in order to address practical problems, as well as a theoretical and practical introduction to the open source software Scalismo. This software is used today for the automatic detection of organs in medical images or the design of medical implants. You will come to a point where you can use your acquired skills and knowledge for real-world professional applications or academic research.
Lernziele At the end of the course the students should
- understand the mathematical concept of a Gaussian process and how it can be used for shape modelling
- know the basic concepts behind the open source software scalismo
- be able to apply the mathematical concepts and the scalismo software in order to solve simple image segmentation problems.
Literatur Links to related literature will be given as part of the online course.
Bemerkungen Requires participation in the online course "Shape Modelling - Computing the human anatomy" (www.futurelearn.com/courses/statistical-shape-modelling)
Weblink Course Webpage, online course

 

Teilnahmebedingungen Open to Master and PhD students with basic knowledge in probability theory and statistics, linear algebra as well as programming experience in a modern programming language (e.g. Java or C++)
Unterrichtssprache Englisch
Einsatz digitaler Medien Online-Angebot obligatorisch
HörerInnen willkommen

 

Intervall Wochentag Zeit Raum

Keine Einzeltermine verfügbar, bitte informieren Sie sich direkt bei den Dozierenden.

Module Doktorat Informatik: Empfehlungen (Promotionsfach: Informatik)
Modul Praxis aktueller Informatikmethoden (Master Studienfach: Informatik)
Wahlbereich Master Informatik: Empfehlungen (Master Informatik)
Leistungsüberprüfung Lehrveranst.-begleitend
Hinweise zur Leistungsüberprüfung The final grade will be computed based on the result of a practical project and an oral exam.
An-/Abmeldung zur Leistungsüberprüfung Anmelden: Belegen; Abmelden: Dozierende
Wiederholungsprüfung keine Wiederholungsprüfung
Skala 1-6 0,5
Wiederholtes Belegen beliebig wiederholbar
Zuständige Fakultät Philosophisch-Naturwissenschaftliche Fakultät, studiendekanat-philnat@unibas.ch
Anbietende Organisationseinheit Fachbereich Informatik

Zurück