Learning 6d object pose estimation using 3d object coordinates E Brachmann, A Krull, F Michel, S Gumhold, J Shotton, C Rother European conference on computer vision, 536-551, 2014 | 590 | 2014 |
Noise2void-learning denoising from single noisy images A Krull, TO Buchholz, F Jug Proceedings of the IEEE/CVF conference on computer vision and pattern …, 2019 | 465 | 2019 |
Uncertainty-driven 6d pose estimation of objects and scenes from a single rgb image E Brachmann, F Michel, A Krull, MY Yang, S Gumhold Proceedings of the IEEE conference on computer vision and pattern …, 2016 | 414 | 2016 |
Dsac-differentiable ransac for camera localization E Brachmann, A Krull, S Nowozin, J Shotton, F Michel, S Gumhold, ... Proceedings of the IEEE conference on computer vision and pattern …, 2017 | 392 | 2017 |
Dsac-differentiable ransac for camera localization E Brachmann, A Krull, S Nowozin, J Shotton, F Michel, S Gumhold, ... Proceedings of the IEEE conference on computer vision and pattern …, 2017 | 392 | 2017 |
Learning analysis-by-synthesis for 6D pose estimation in RGB-D images A Krull, E Brachmann, F Michel, MY Yang, S Gumhold, C Rother Proceedings of the IEEE international conference on computer vision, 954-962, 2015 | 197 | 2015 |
Global hypothesis generation for 6D object pose estimation F Michel, A Kirillov, E Brachmann, A Krull, S Gumhold, B Savchynskyy, ... Proceedings of the IEEE Conference on Computer Vision and Pattern …, 2017 | 109 | 2017 |
Democratising deep learning for microscopy with ZeroCostDL4Mic L von Chamier, RF Laine, J Jukkala, C Spahn, D Krentzel, E Nehme, ... Nature communications 12 (1), 1-18, 2021 | 108 | 2021 |
Dynein motion switches from diffusive to directed upon cortical anchoring V Ananthanarayanan, M Schattat, SK Vogel, A Krull, N Pavin, ... Cell 153 (7), 1526-1536, 2013 | 88 | 2013 |
Pivoting of microtubules around the spindle pole accelerates kinetochore capture I Kalinina, A Nandi, P Delivani, MR Chacón, AH Klemm, ... Nature cell biology 15 (1), 82-87, 2013 | 80 | 2013 |
Probabilistic noise2void: Unsupervised content-aware denoising A Krull, T Vičar, M Prakash, M Lalit, F Jug Frontiers in Computer Science 2, 5, 2020 | 79 | 2020 |
Random forests versus Neural Networks—What's best for camera localization? D Massiceti, A Krull, E Brachmann, C Rother, PHS Torr 2017 IEEE international conference on robotics and automation (ICRA), 5118-5125, 2017 | 70 | 2017 |
6-dof model based tracking via object coordinate regression A Krull, F Michel, E Brachmann, S Gumhold, S Ihrke, C Rother Asian conference on computer vision, 384-399, 2014 | 62 | 2014 |
Artificial-intelligence-driven scanning probe microscopy A Krull, P Hirsch, C Rother, A Schiffrin, C Krull Communications Physics 3 (1), 1-8, 2020 | 49 | 2020 |
ZeroCostDL4Mic: an open platform to use Deep-Learning in Microscopy L Von Chamier, RF Laine, J Jukkala, C Spahn, D Krentzel, E Nehme, ... BioRxiv, 2020 | 46 | 2020 |
Poseagent: Budget-constrained 6d object pose estimation via reinforcement learning A Krull, E Brachmann, S Nowozin, F Michel, J Shotton, C Rother Proceedings of the IEEE Conference on Computer Vision and Pattern …, 2017 | 43 | 2017 |
Pose Estimation of Kinematic Chain Instances via Object Coordinate Regression. F Michel, A Krull, E Brachmann, MY Yang, S Gumhold, C Rother BMVC, 181.1-181.11, 2015 | 36 | 2015 |
A divide and conquer strategy for the maximum likelihood localization of low intensity objects A Krull, A Steinborn, V Ananthanarayanan, D Ramunno-Johnson, ... Optics express 22 (1), 210-228, 2014 | 36 | 2014 |
DenoiSeg: Joint Denoising and Segmentation TO Buchholz, M Prakash, D Schmidt, A Krull, F Jug European Conference on Computer Vision, 324-337, 2020 | 27 | 2020 |
Content-aware image restoration for electron microscopy TO Buchholz, A Krull, R Shahidi, G Pigino, G Jékely, F Jug Methods in cell biology 152, 277-289, 2019 | 25 | 2019 |