Nick Heilenk?tter
Nick Heilenk?tter
Wissenschaftlicher Mitarbeiter
Doktorand Graduiertenkolleg π3
Team Deep Learning und Inverse Probleme
Bibliothekstra?e 5
28359 Bremen
Raum: MZH 2170
Telefon: +49 0421 218-63815
E-Mail: nick7@uni-bremen.de
Forschungsgebiete
- Deep Learning
- Inverse Probleme
- Deep Learning für Partielle Differentialgleichungen
Projekte
- TorchPhysics
- Graduiertenkolleg π? - Parameter Identification – Analysis, Algorithms, Applications
Zeitschriftenartikel
D. Nganyu Tanyu, J. Ning, T. Freudenberg, N. Heilenk?tter, A. Rademacher, U. Iben, P. Maa?.
Deep learning methods for partial differential equations and related parameter identification problems.
Inverse Problems, 39(10), 2023.
DOI: 10.1088/1361-6420/ace9d4
J. Le’Clerc Arrastia, N. Heilenk?tter, D. Otero Baguer, L. Hauberg-Lotte, T. Boskamp, S. Hetzer, N. Duschner, J. Schaller, P. Maass.
Deeply Supervised UNet for Semantic Segmentation to Assist Dermatopathological Assessment of Basal Cell Carcinoma.
Journal of Imaging. 2021; 7(4):71.
DOI: 10.3390/jimaging7040071
Preprints
C. Arndt, A. Denker, S. Dittmer, N. Heilenk?tter, M. Iske, T. Kluth, P. Maa?, J. Nickel.
Invertible residual networks in the context of regularization theory for linear inverse problems.
Zur Ver?ffentlichung eingereicht.
online unter: https://arxiv.org/abs/2306.01335
C. Arndt, S. Dittmer, N. Heilenk?tter, M. Iske, T. Kluth, J. Nickel.
Bayesian view on the training of invertible residual networks for solving linear inverse problems.
Zur Ver?ffentlichung eingereicht.
online unter: https://www.x-mol.net/paper/article/1682514725633245184
Derick Nganyu Tanyu, Jianfeng Ning, Tom Freudenberg, Nick Heilenk?tter, Andreas Rademacher, Uwe Iben, Peter Maass
Deep Learning Methods for Partial Differential Equations and Related Parameter Identification Problems
online unter: arxiv.org/abs/2212.03130
DOI: 10.48550/arXiv.2212.03130