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Matthias Rottmann

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Reducing Texture Bias of Deep Neural Networks via Edge Enhancing Diffusion

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Feb 14, 2024
Edgar Heinert, Matthias Rottmann, Kira Maag, Karsten Kahl

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Uncertainty quantification for deep learning-based schemes for solving high-dimensional backward stochastic differential equations

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Oct 05, 2023
Lorenc Kapllani, Long Teng, Matthias Rottmann

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Deep Active Learning with Noisy Oracle in Object Detection

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Sep 30, 2023
Marius Schubert, Tobias Riedlinger, Karsten Kahl, Matthias Rottmann

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ResBuilder: Automated Learning of Depth with Residual Structures

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Aug 16, 2023
Julian Burghoff, Matthias Rottmann, Jill von Conta, Sebastian Schoenen, Andreas Witte, Hanno Gottschalk

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LMD: Light-weight Prediction Quality Estimation for Object Detection in Lidar Point Clouds

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Jun 15, 2023
Tobias Riedlinger, Marius Schubert, Sarina Penquitt, Jan-Marcel Kezmann, Pascal Colling, Karsten Kahl, Lutz Roese-Koerner, Michael Arnold, Urs Zimmermann, Matthias Rottmann

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Identifying Label Errors in Object Detection Datasets by Loss Inspection

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Mar 13, 2023
Marius Schubert, Tobias Riedlinger, Karsten Kahl, Daniel Kröll, Sebastian Schoenen, Siniša Šegvić, Matthias Rottmann

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AttEntropy: Segmenting Unknown Objects in Complex Scenes using the Spatial Attention Entropy of Semantic Segmentation Transformers

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Dec 29, 2022
Krzysztof Lis, Matthias Rottmann, Sina Honari, Pascal Fua, Mathieu Salzmann

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Towards Rapid Prototyping and Comparability in Active Learning for Deep Object Detection

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Dec 21, 2022
Tobias Riedlinger, Marius Schubert, Karsten Kahl, Hanno Gottschalk, Matthias Rottmann

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MGiaD: Multigrid in all dimensions. Efficiency and robustness by coarsening in resolution and channel dimensions

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Nov 10, 2022
Antonia van Betteray, Matthias Rottmann, Karsten Kahl

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