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Marius Schubert

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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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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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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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Uncertainty Quantification and Resource-Demanding Computer Vision Applications of Deep Learning

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May 30, 2022
Julian Burghoff, Robin Chan, Hanno Gottschalk, Annika Muetze, Tobias Riedlinger, Matthias Rottmann, Marius Schubert

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Gradient-Based Quantification of Epistemic Uncertainty for Deep Object Detectors

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Jul 09, 2021
Tobias Riedlinger, Matthias Rottmann, Marius Schubert, Hanno Gottschalk

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MetaDetect: Uncertainty Quantification and Prediction Quality Estimates for Object Detection

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Oct 06, 2020
Marius Schubert, Karsten Kahl, Matthias Rottmann

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Uncertainty Measures and Prediction Quality Rating for the Semantic Segmentation of Nested Multi Resolution Street Scene Images

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Apr 09, 2019
Matthias Rottmann, Marius Schubert

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