Ilastik: interactive machine learning for (bio) image analysis S Berg, D Kutra, T Kroeger, CN Straehle, BX Kausler, C Haubold, ... Nature Methods 16 (12), 1226-1232, 2019 | 520 | 2019 |
Graphical model for joint segmentation and tracking of multiple dividing cells M Schiegg, P Hanslovsky, C Haubold, U Koethe, L Hufnagel, ... Bioinformatics 31 (6), 948-956, 2015 | 96 | 2015 |
Probabilistic recurrent state-space models A Doerr, C Daniel, M Schiegg, NT Duy, S Schaal, M Toussaint, ... International Conference on Machine Learning, 1280-1289, 2018 | 79 | 2018 |
Conservation tracking M Schiegg, P Hanslovsky, BX Kausler, L Hufnagel, FA Hamprecht Proceedings of the IEEE International Conference on Computer Vision, 2928-2935, 2013 | 79 | 2013 |
A discrete chain graph model for 3d+ t cell tracking with high misdetection robustness BX Kausler, M Schiegg, B Andres, M Lindner, U Koethe, H Leitte, ... European Conference on Computer Vision, 144-157, 2012 | 52 | 2012 |
Segmenting and Tracking Multiple Dividing Targets Using ilastik C Haubold, M Schiegg, A Kreshuk, S Berg, U Koethe, FA Hamprecht Focus on bio-image informatics, 199-229, 2016 | 42 | 2016 |
Tracking indistinguishable translucent objects over time using weakly supervised structured learning L Fiaschi, F Diego, K Gregor, M Schiegg, U Koethe, M Zlatic, ... Proceedings of the IEEE Conference on Computer Vision and Pattern …, 2014 | 28 | 2014 |
Active structured learning for cell tracking: algorithm, framework, and usability X Lou, M Schiegg, FA Hamprecht IEEE transactions on medical imaging 33 (4), 849-860, 2014 | 25 | 2014 |
Time series anomaly detection based on shapelet learning L Beggel, BX Kausler, M Schiegg, M Pfeiffer, B Bischl Computational Statistics 34 (3), 945-976, 2019 | 20 | 2019 |
Differentiable likelihoods for fast inversion of’likelihood-free’dynamical systems H Kersting, N Krämer, M Schiegg, C Daniel, M Tiemann, P Hennig International Conference on Machine Learning, 5198-5208, 2020 | 16 | 2020 |
Relational generalized few-shot learning X Shi, L Salewski, M Schiegg, Z Akata, M Welling arXiv preprint arXiv:1907.09557, 2019 | 13 | 2019 |
Markov logic mixtures of Gaussian processes: Towards machines reading regression data M Schiegg, M Neumann, K Kersting Artificial Intelligence and Statistics, 1002-1011, 2012 | 8 | 2012 |
Proof-reading guidance in cell tracking by sampling from tracking-by-assignment models M Schiegg, B Heuer, C Haubold, S Wolf, U Koethe, FA Hamprecht 2015 IEEE 12th International Symposium on Biomedical Imaging (ISBI), 394-398, 2015 | 4 | 2015 |
Learning diverse models: The coulomb structured support vector machine M Schiegg, F Diego, FA Hamprecht European Conference on Computer Vision, 585-599, 2016 | 2 | 2016 |
Method for ascertaining a NOx concentration and a NH3 slip downstream from an SCR catalytic converter C Daniel, E Klenske, H Markert, M Schiegg, S Angermaier, V Imhof US Patent 11,261,774, 2022 | 1 | 2022 |
Method for ascertaining driving profiles M Schiegg, MB Zafar, S Angermaier US Patent App. 16/828,061, 2020 | 1 | 2020 |
Method for ascertaining driving profiles M Schiegg, MB Zafar, S Angermaier US Patent App. 16/844,376, 2020 | 1 | 2020 |
Model calculation unit and control unit for calculating a multilayer perceptron model with feedforward and feedback A Guntoro, H Markert, M Schiegg US Patent App. 16/330,625, 2020 | 1 | 2020 |
Multi-target tracking with probabilistic graphical models MJ Schiegg | 1 | 2015 |
Method, device and computer program for ascertaining an anomaly B Kausler, L Beggel, M Schiegg, M Pfeiffer US Patent 11,215,485, 2022 | | 2022 |