1 code implementation • IEEE Transactions on Biomedical Engineering 2021 • Christoph Leitner, Robert Jarolim, Bernhard Englmair, Annika Kruse, Karen Andrea Lara Hernandez, Andreas Konrad, Eric Su, Jörg Schröttner, Luke A. Kelly, Glen A. Lichtwark, Markus Tilp, Christian Baumgartner
We propose a reliable and time efficient machine-learning approach to track these junctions in ultrasound videos and support clinical biomechanists in gait analysis.
Ranked #1 on
Muscle Tendon Junction Identification
on deepMTJ
1 code implementation • 5 May 2020 • Christoph Leitner, Robert Jarolim, Andreas Konrad, Annika Kruse, Markus Tilp, Jörg Schröttner, Christian Baumgartner
Recording muscle tendon junction displacements during movement, allows separate investigation of the muscle and tendon behaviour, respectively.
Ranked #1 on
Muscle Tendon Junction Identification
on deepMTJ v1
1 code implementation • 11 Feb 2019 • Krishna Chaitanya, Neerav Karani, Christian Baumgartner, Olivio Donati, Anton Becker, Ender Konukoglu
However, there is potential to improve the approach by (i) explicitly modeling deformation fields (non-affine spatial transformation) and intensity transformations and (ii) leveraging unlabelled data during the generative process.
1 code implementation • 25 May 2018 • Neerav Karani, Krishna Chaitanya, Christian Baumgartner, Ender Konukoglu
We evaluate the method for brain structure segmentation in MR images.
1 code implementation • 28 Dec 2016 • Konstantinos Kamnitsas, Christian Baumgartner, Christian Ledig, Virginia F. J. Newcombe, Joanna P. Simpson, Andrew D. Kane, David K. Menon, Aditya Nori, Antonio Criminisi, Daniel Rueckert, Ben Glocker
In this work we investigate unsupervised domain adaptation using adversarial neural networks to train a segmentation method which is more invariant to differences in the input data, and which does not require any annotations on the test domain.