Mattias P Heinrich

Universität zu Lübeck

Names

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Mattias P Heinrich
,
Mattias P. Heinrich

Emails

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****@imi.uni-luebeck.de
,
****@eng.ox.ac.uk

Education & Career History

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Assistant Professor
Universität zu Lübeck (uni-luebeck.de)
2013Present
 
Assistant Professor
University of Luebeck ( )
2013Present
Post Doc
University of Oxford ( )
20132013
PhD student
University of Oxford (ox.ac.uk)
20092013
 
Graduate Student
University of Oxford ( )
20092013

Advisors, Relations & Conflicts

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Advisee
Max Blendowski
****@imi.uni-luebeck.de
2017Present
Advisee
Lasse Hansen
****@imi.uni-luebeck.de
2017Present
Advisee
In Young Ha
****@imi.uni-luebeck.de
2016Present
Advisee
Christian Lucas
****@imi.uni-luebeck.de
2016Present
Coworker
Julia Krüger
****@imi.uni-luebeck.de
2014Present
Coworker
Ozan Oktay
****@imperial.ac.uk
2013Present
 
Advisor
Julia A Schnabel
****@gmail.com
2009Present
PhD Advisor
Julia Schnabel
****@kcl.ac.uk
20092013
 
PhD Advisor
Mark Jenkinson
****@ndcn.ox.ac.uk
20092013
 
PhD Advisor
Michael Brady
****@oncology.ox.ac.uk
20092013
 
Advisor
Mark Jenkinson
****@fmrib.ox.ac.uk
20092013
Advisor
Michael Brady
****@oncology.ox.ac.uk
20092013

Expertise

For each line, enter comma-separated keyphrases representing an intersection of your interests. Think of each line as a query for papers in which you would have expertise and interest. For example: deep learning, RNNs, dependency parsing

Deep Learning
2015Present
 
Representation Learning
2010Present
 
Image Registration
2009Present