T
Thomas Brox
Researcher at University of Freiburg
Publications - 353
Citations - 127470
Thomas Brox is an academic researcher from University of Freiburg. The author has contributed to research in topics: Segmentation & Optical flow. The author has an hindex of 99, co-authored 329 publications receiving 94431 citations. Previous affiliations of Thomas Brox include Dresden University of Technology & University of California, Berkeley.
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Inline quality rating of multi‐crystalline wafers based on photoluminescence images
Matthias Demant,Stefan Rein,Jonas Haunschild,Theresa Strauch,Hannes Höffler,Juliane Broisch,Sven Wasmer,Kirsten Sunder,Oliver Anspach,Thomas Brox +9 more
Journal ArticleDOI
White Matter MS-Lesion Segmentation Using a Geometric Brain Model
Maddalena Strumia,Frank R. Schmidt,Constantinos Anastasopoulos,Cristina Granziera,Gunnar Krueger,Thomas Brox +5 more
TL;DR: A 3D MS-lesion segmentation method based on an adaptive geometric brain model that is independent of an MRI atlas and robust with respect to minor inconsistencies at the boundary level of the ground truth annotation is presented.
Posted Content
Non-smooth Non-convex Bregman Minimization: Unification and new Algorithms
TL;DR: In this article, the authors propose an Armijo-like line search strategy for non-smooth non-convex optimization with Bregman proximal point approximation.
Proceedings ArticleDOI
Multimodal Future Localization and Emergence Prediction for Objects in Egocentric View With a Reachability Prior
TL;DR: Experiments show that the reachability prior combined with multi-hypotheses learning improves multimodal prediction of the future location of tracked objects and, for the first time, the emergence of new objects.
Posted Content
Anomaly Detection With Multiple-Hypotheses Predictions
TL;DR: The multiple-hypothesesbased anomaly detection framework allows the reliable identification of out-of-distribution samples and is criticized by a discriminator, which prevents artificial data modes not supported by data, and enforces diversity across hypotheses.