Publications

Export 223 results:
Author [ Title(Asc)] Type Year
Filters: Author is Christoph Schnörr  [Clear All Filters]
A B C D E F G H I J K L M N O P Q R S T U V W X Y Z 
S
M. Bergtholdt, Kappes, J. H., Schmidt, S., and Schnörr, C., A Study of Parts-Based Object Class Detection Using Complete Graphs, Int. J. Comp. Vision, vol. 87, pp. 93-117, 2010.
M. Bergtholdt, Kappes, J. H., Schmidt, S., and Schnörr, C., A Study of Parts-Based Object Class Detection Using Complete Graphs, Int.~J.~Comp.~Vision, vol. 87, pp. 93-117, 2010.PDF icon Technical Report (2.18 MB)
J. Yuan, Schnörr, C., Steidl, G., and Becker, F., A Study of Non-Smooth Convex Flow Decomposition, in Proc. Variational, Geometric and Level Set Methods in Computer Vision, 2005, vol. 3752, pp. 1–12.
B. Savchynskyy, Kappes, J. H., Schmidt, S., and Schnörr, C., A Study of Nesterov's Scheme for Lagrangian Decomposition and MAP Labeling, IEEE International Conference on Computer Vision and Pattern Recognition (CVPR), accepted as oral presentation, pp. 1817 - 1823, 2011.
B. Savchynskyy, Kappes, J. H., Schmidt, S., and Schnörr, C., A Study of Nesterov's Scheme for Lagrangian Decomposition and MAP Labeling, in IEEE International Conference on Computer Vision and Pattern Recognition (CVPR), 2011.PDF icon Technical Report (408.99 KB)
D. Cremers and Schnörr, C., Statistical Shape Knowledge in Variational Motion Segmentation, Image and Vision Comp., vol. 21, pp. 77-86, 2003.
S. Schmidt, Kappes, J. H., Bergtholdt, M., Pekar, V., Dries, S., Bystrov, D., and Schnörr, C., Spine Detection and Labeling Using a Parts-Based Graphical Model, in Proc. 20th International Conference on Information Processing in Medical Imaging (IPMI 2007), 2007, vol. 4584, pp. 122-133.PDF icon Technical Report (1.46 MB)
F. Lauer and Schnörr, C., Spectral Clustering of Linear Subspaces for Motion Segmentation, in Proceedings of the IEEE Conference on Computer Vision (ICCV 09) Kyoto, Japan, in press, 2009, pp. 678-685.
F. Lauer and Schnörr, C., Spectral Clustering of Linear Subspaces for Motion Segmentation, in Proc.~IEEE Int.~Conf.~Computer Vision (ICCV'09), 2009.PDF icon Technical Report (1.12 MB)
S. Petra, Schröder, A., Wieneke, B., and Schnörr, C., On Sparsity Maximization in Tomographic Particle Image Reconstruction, in Pattern Recognition -- 30th DAGM Symposium, 2008, vol. 5096, p. 294--303.PDF icon Technical Report (1014.71 KB)
D. Breitenreicher, Lellmann, J., and Schnörr, C., Sparse Template-Based Variational Image Segmentation, Advances in Adaptive Data Analysis, vol. 3, pp. 149-166, 2011.
D. Breitenreicher, Lellmann, J., and Schnörr, C., Sparse Template-Based Variational Image Segmentation, Advances in Adaptive Data Analysis, vol. 3, pp. 149-166, 2011.PDF icon Technical Report (866.28 KB)
F. Lenzen, Lellmann, J., Becker, F., and Schnörr, C., Solving QVIs for Image Restoration with Adaptive Constraint Sets, SIAM Journal on Imaging Sciences (SIIMS), in press, 2014.
F. Lenzen, Lellmann, J., Becker, F., and Schnörr, C., Solving Quasi-Variational Inequalities for Image Restoration with Adaptive Constraint Sets, SIAM J.~Imag.~Sci., vol. 7, p. 2139--2174, 2014.PDF icon Technical Report (802.13 KB)
J. Yuan, Schnörr, C., and Steidl, G., Simultaneous Optical Flow Estimation and Decomposition, SIAM J.~Scientific Computing, vol. 29, pp. 2283-2304, 2007.PDF icon Technical Report (1.16 MB)
C. Schnörr, Signal and Image Approximation with Level-Set Constraints, Computing, vol. 81, pp. 137-160, 2007.PDF icon Technical Report (506.8 KB)
D. Cremers, Kohlberger, T., and Schnörr, C., Shape Statistics in Kernel Space for Variational Image Segmentation, Pattern Recognition, vol. 36, pp. 1929–1943, 2003.
D. Cremers, Kohlberger, T., and Schnörr, C., Shape Statistics in Kernel Space for Variational Image Segmentation, Pattern Recognition, vol. 36, p. 1929--1943, 2003.PDF icon Technical Report (1.67 MB)
M. Bergtholdt and Schnörr, C., Shape Priors and Online Appearance Learning for Variational Segmentation and Object Recognition in Static Scenes, Pattern Recognition, Proc. 27th DAGM Symposium, vol. 3663. Springer, pp. 342–350, 2005.
L. Görlitz, Menze, B. H., Weber, M. - A., and Kelm, B. Michael, Semi-Supervised Tumor Detection in MRSI With Discriminative Random Fields, in Pattern Recognition, 2007, vol. 4713, pp. 224-233.PDF icon Technical Report (872.46 KB)
B. Andres, Hamprecht, F. A., and Garbe, C. S., Selection of Local Optical Flow Models by Means of Residual Analysis, in Pattern Recognition, 2007, vol. 4713, pp. 72-81.PDF icon Technical Report (229.64 KB)
B. Andres, Garbe, C. S., Schnörr, C., and Jähne, B., Selection of local optical flow models by means of residual analysis, in Proceedings of the 29th DAGM Symposium on Pattern Recognition, 2007, p. 72--81.
J. Berger, Lenzen, F., Becker, F., Neufeld, A., and Schnörr, C., Second-Order Recursive Filtering on the Rigid-Motion Lie Group SE(3) Based on Nonlinear Observations. 2015.PDF icon Technical Report (4.42 MB)
J. Berger, Lenzen, F., Becker, F., Neufeld, A., and Schnörr, C., Second-Order Recursive Filtering on the Rigid-Motion Lie Group SE(3) Based on Nonlinear Observations. 2015.
J. Berger, Neufeld, A., Becker, F., Lenzen, F., and Schnörr, C., Second Order Minimum Energy Filtering on SE(3) with Nonlinear Measurement Equations, in Scale Space and Variational Methods in Computer Vision (SSVM 2015), 2015.PDF icon Technical Report (364.01 KB)
J. Berger, Neufeld, A., Becker, F., Lenzen, F., and Schnörr, C., Second Order Minimum Energy Filtering on SE(3) with Nonlinear Measurement Equations, in Scale Space and Variational Methods in Computer Vision (SSVM 2015), 2015.

Pages