Publications

Export 223 results:
Author [ Title(Desc)] 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 
A
S. Petra, Popa, C., and Schnörr, C., Accelerating Constrained SIRT with Applications in Tomographic Particle Image Reconstruction, IWR, University of Heidelberg, 2009.PDF icon Technical Report (3.33 MB)
C. Kondermann, Kondermann, D., Jähne, B., Garbe, C. S., Schnörr, C., and Jähne, B., An adaptive confidence measure for optical flows based on linear subspace projections, in Proceedings of the 29th DAGM Symposium on Pattern Recognition, 2007, vol. 4713, p. 132--141.
E. Bodnariuc, Gurung, A., Petra, S., and Schnörr, C., Adaptive Dictionary-Based Spatio-temporal Flow Estimation for Echo PIV, in Proc.~EMMCVPR, 2015, vol. 8932, p. 378--391.PDF icon Technical Report (951.37 KB)
E. Bodnariuc, Gurung, A., Petra, S., and Schnörr, C., Adaptive Dictionary-Based Spatio-temporal Flow Estimation for Echo PIV, in EMMCVPR, 2015.
W. Hinterberger, Scherzer, O., Schnörr, C., and Weickert, J., Analysis of Optical Flow Models in the Framework of Calculus of Variations, Numer. Funct. Anal. Optimiz., vol. 23, pp. 69–89, 2002.
N. Gianniotis, Schnörr, C., Molkenthin, C., and Bora, S. S., Approximate variational inference based on a finite sample of Gaussian latent variables, Patt.~Anal.~Appl., 2015.PDF icon Technical Report (1.4 MB)
S. Petra and Schnörr, C., Average Case Recovery Analysis of Tomographic Compressive Sensing, Linear Algebra and its Applications, vol. 441, pp. 168-198, 2014.PDF icon Technical Report (1.85 MB)
B
S. Weber, Nagy, A., Schüle, T., Schnörr, C., and Kuba, A., A Benchmark Evaluation of Large-Scale Optimization Approaches to Binary Tomography, in Discrete Geometry for Computer Imagery (DGCI 2006), 2006, vol. 4245, pp. 146-156.PDF icon Technical Report (301.1 KB)
S. Weber, Schüle, T., Schnörr, C., and Kuba, A., Binary Tomography with Deblurring, in Combinatorial Image Analysis, 2006, vol. 4040, pp. 375-388.PDF icon Technical Report (803.63 KB)
S. Petra, Schnörr, C., Becker, F., and Lenzen, F., B-SMART: Bregman-Based First-Order Algorithms for Non-Negative Compressed Sensing Problems, in Proceedings of the 4th International Conference on Scale Space and Variational Methods in Computer Vision SSVM, 2013, pp. 110-124.
S. Petra, Schnörr, C., Becker, F., and Lenzen, F., B-SMART: Bregman-Based First-Order Algorithms for Non-Negative Compressed Sensing Problems, in Proceedings of the 4th International Conference on Scale Space and Variational Methods in Computer Vision (SSVM) 2013, 2013, vol. 7893, pp. 110-124.PDF icon Technical Report (1.15 MB)
J. H. Kappes, Savchynskyy, B., and Schnörr, C., A Bundle Approach To Efficient MAP-Inference by Lagrangian Relaxation, in CVPR. Proceedings, 2012, pp. 1688-1695.
J. H. Kappes, Savchynskyy, B., and Schnörr, C., A Bundle Approach To Efficient MAP-Inference by Lagrangian Relaxation, in CVPR, 2012.PDF icon Technical Report (430.63 KB)
C
F. Lenzen, Becker, F., Lellmann, J., Petra, S., and Schnörr, C., A Class of Quasi-Variational Inequalities for Adaptive Image Denoising and Decomposition, Computational Optimization and Applications (COAP), vol. 54 (2), pp. 371-398, 2013.
F. Lenzen, Becker, F., Lellmann, J., Petra, S., and Schnörr, C., A class of quasi-variational inequalities for adaptive image denoising and decomposition, Computational Optimization and Applications, vol. 54, pp. 371-398, 2013.PDF icon Technical Report (748.66 KB)
D. Breitenreicher, Lellmann, J., and Schnörr, C., COAL: a generic modelling and prototyping framework for convex optimization problems of variational image analysis, Optimization Methods and Software, vol. 28, pp. 1081-1094, 2013.PDF icon Technical Report (1.69 MB)
A. Bruhn, Weickert, J., and Schnörr, C., Combining the Advantages of Local and Global Optic Flow Methods, in Pattern Recognition, Proc. 24th DAGM Symposium, Zürich, Switzerland, 2002, vol. 2449, pp. 454–462.
J. H. Kappes, Andres, B., Hamprecht, F. A., Schnörr, C., Nowozin, S., Batra, D., Sungwoong, K., Kausler, B. X., Lellmann, J., Komodakis, N., and Rother, C., A Comparative Study of Modern Inference Techniques for Discrete Energy Minimization Problems, in CVPR 2013. Proceedings, 2013.PDF icon Technical Report (1.35 MB)
J. H. Kappes, Andres, B., Hamprecht, F. A., Schnörr, C., Nowozin, S., Batra, D., Kim, S., Kausler, B. X., Lellmann, J., Komodakis, N., and Rother, C., A Comparative Study of Modern Inference Techniques for Discrete Energy Minimization Problem, in CVPR, 2013.PDF icon Technical Report (1.35 MB)
J. H. Kappes, Andres, B., Hamprecht, F. A., Schnörr, C., Nowozin, S., Batra, D., Kim, S., Kausler, B. X., Kröger, T., Lellmann, J., Komodakis, N., Savchynskyy, B., and Rother, C., A Comparative Study of Modern Inference Techniques for Structured Discrete Energy Minimization Problems, CoRR, 2014.
J. H. Kappes, Andres, B., Hamprecht, F. A., Schnörr, C., Nowozin, S., Batra, D., Kim, S., Kausler, B. X., Kröger, T., Lellmann, J., Komodakis, N., Savchynskyy, B., and Rother, C., A Comparative Study of Modern Inference Techniques for Structured Discrete Energy Minimization Problems, International Journal of Computer Vision, vol. 115, pp. 155–184, 2015.
J. H. Kappes, Andres, B., Hamprecht, F. A., Schnörr, C., Nowozin, S., Batra, D., Kim, S., Kausler, B. X., Kröger, T., Lellmann, J., Komodakis, N., Savchynskyy, B., and Rother, C., A Comparative Study of Modern Inference Techniques for Structured Discrete Energy Minimization Problems, International Journal of Computer Vision, vol. 115, pp. 155–184, 2015.
J. H. Kappes, Andres, B., Hamprecht, F. A., Schnörr, C., Nowozin, S., Batra, D., Kim, S., Kausler, B. X., Kröger, T., Lellmann, J., Komodakis, N., Savchynskyy, B., and Rother, C., A Comparative Study of Modern Inference Techniques for Structured Discrete Energy Minimization Problems, CoRR, vol. abs/1404.0533, 2014.PDF icon Technical Report (3.32 MB)
J. H. Kappes, Andres, B., Hamprecht, F. A., Schnörr, C., Nowozin, S., Batra, D., Kim, S., Kausler, B. X., Kröger, T., Lellmann, J., Komodakis, N., Savchynskyy, B., and Rother, C., A Comparative Study of Modern Inference Techniques for Structured Discrete Energy Minimization Problems, Int.~J.~Comp.~Vision, 2015.PDF icon Technical Report (5.12 MB)
J. H. Kappes, Andres, B., Hamprecht, F. A., Schnörr, C., Nowozin, S., Batra, D., Kim, S., Kausler, B. X., Kröger, T., Lellmann, J., Komodakis, N., Savchynskyy, B., and Rother, C., A Comparative Study of Modern Inference Techniques for Structured Discrete Energy Minimization Problems, International Journal of Computer Vision, vol. 115, pp. 155–184, 2015.
J. H. Kappes, Andres, B., Hamprecht, F. A., Schnörr, C., Nowozin, S., Batra, D., Kim, S., Kausler, B. X., Kröger, T., Lellmann, J., Komodakis, N., Savchynskyy, B., and Rother, C., A Comparative Study of Modern Inference Techniques for Structured Discrete Energy Minimization Problems, International Journal of Computer Vision, pp. 1-30, 2015.PDF icon Technical Report (1.5 MB)
F. Rathke and Schnörr, C., A Computational Approach to Log-Concave Density Estimation, An. St. Univ. Ovidius Constanta, vol. 23, pp. 151-166, 2015.
F. Rathke and Schnörr, C., A Computational Approach to Log-Concave Density Estimation, An. St. Univ. Ovidius Constanta, vol. 23, pp. 151-166, 2015.PDF icon Technical Report (1.07 MB)
K. Fundana, Heyden, A., Gosch, C., and Schnörr, C., Continuous Graph Cuts for Prior-Based Object Segmentation, in 19th Int.~Conf.~Patt.~Recog.~(ICPR), 2008, p. 1--4.PDF icon Technical Report (414.89 KB)
J. Lellmann and Schnörr, C., Continuous Multiclass Labeling Approaches and Algorithms, SIAM J.~Imag.~Sci., vol. 4, pp. 1049-1096, 2011.PDF icon Technical Report (4.31 MB)
B. Schmitzer and Schnörr, C., Contour Manifolds and Optimal Transport. 2013.
M. Heiler and Schnörr, C., Controlling Sparseness in Non-negative Tensor Factorization, in Computer Vision -- ECCV 2006, 2006, vol. 3951, pp. 56-67.PDF icon Technical Report (568.86 KB)
J. Yuan, Schnörr, C., and Steidl, G., Convex Hodge Decomposition and Regularization of Image Flows, J.~Math.~Imag.~Vision, vol. 33, pp. 169-177, 2009.PDF icon Technical Report (1003.75 KB)

Pages