Navigation überspringen
Zur Navigation
Zum Seitenende
Organisationsmenü öffnen
Organisationsmenü schließen
Friedrich-Alexander-Universität
Pattern Recognition Lab
PRL
FAU
Zur zentralen FAU Website
Geben Sie hier den Suchbegriff ein, um in diesem Webauftritt zu suchen:
Suche öffnen
Campo
StudOn
Stellenangebote
Lageplan
Hilfe im Notfall
Friedrich-Alexander-Universität
Pattern Recognition Lab
PRL
Menu
Menu schließen
Lab
News
Cooperations
Join the Pattern Recognition Lab
Ph.D. Gallery
Contact
Directions
Team
Our Team
Former PRL members
Research
Research Groups
Research Projects
Publications
Competitions
Datasets
Research Demo Videos
Pattern Recognition Blog
Beyond the Patterns
Teaching
Curriculum / Courses
Lecture Notes
Lecture Videos
LME Videos
Thesis / Projects
Startseite
Teaching
LME Videos
Pattern Recognition Symposium Winter 2019/20
Pattern Recognition Symposium Winter 2019/20
Bereichsnavigation:
Teaching
Curriculum / Courses
Free Medical Engineering Resources
Thesis / Projects
Free Machine and Deep Learning Resources
LME Videos
Invited Talks
Science Talks
Student Works
CONRAD Tutorials
CT Reconstruction Animations
Interventional Medical Image Processing Summer 2016
Pattern Recognition Symposium Winter 2019/20
Pattern Recognition Symposium Winter 2019/20
PRS Winter 2019/20 Opening and Medical Data Donors Game Demos
PRS Winter 2019/20 Alexander Preuhs – Deep Autofocus with Cone-Beam Consistency Constraint
PRS Winter 2019/20 Yixing Huang – Field of View Extension in CT using Deep Learning Prior
PRS Winter 2019/20 Juan Camilo Vásquez-Correa – Representation Learning for Pathological Speech
PRS Winter 2019/20 Hendrik Schröter – Learning-based Noise Reduction using Complex Linear Coding
PRS Winter 2019/20 Christopher Syben – Perspective Distorted MR-Projections
PRS Winter 2019/20 Tobias Würfl – Reconstruction of CT Geometry without Point Correspondences
PRS Winter 2019/20 Weilin Fu – Lesson Learnt: Modularization of Deep Networks 4 Cross-Modality Reuse
PRS Winter 2019/20 Leonardo Impett – Open problems in Computer Vision for the History of Art