References
- Alvarez L, Weickert J, Sanchez J. Reliable estimation of dense optical flow fields with large displacements. Int. J. Computer Vision 2000; 39: 41–56, [CSA]
- Barron J L, Fleet D J, Beauchemin S S. Performance of optical flow techniques. Int J Computer Vision 1994; 1: 43–77, [CSA], [CROSSREF]
- Bayerl P, Neumann H. Disambiguating visual motion by form—motion interaction—a computational model. Int. J. Computer Vision (Special Issue), [CSA]
- Brox T, Bruhn A, Papenberg N, Weickert J. High accuracy optical flow estimation based on a theory for warping. Proceeding of ECCV 2004. 2004
- Calow D, Krüger N, Wörgötter F, Lappe M. Statistics of optic flow for self-motion through natural scenes. Proc. Dynamic Perception Workshop. 2004, pp. 133–138
- Canny J. A computational approach to edge detection. IEEE Transactions on Pattern Analysis and Machine Intelligence 1986; 8: 679–698, [CSA]
- Cavanagh P, Mather G. Motion: the long and the short of it. Spatial Vision 1989; 4: 103–129, [PUBMED], [INFOTRIEVE], [CSA]
- Coppola D M, Purves H R, McCoy A N, Purves D. The distribution of oriented contours in the real world. PNAS 1998; 4002–4006, [CSA], [CROSSREF]
- Coxeter H SM. Introduction to Geometry2nd ed. Wiley & Sons, Chichester 1969
- Felsberg M. Low-Level Image Processing with the Structure Multivector. Institute of Computer Science and Applied Mathematics, Christian-Albrechts-University of Kiel. 2002, PhD thesis
- Felsberg M, Krüger N. A probablistic definition of intrinsic dimensionality for images. Pattern Recognition, 24th DAGM Symposium. 2003
- Fermueller C, Shulman D, Aloimonos Y. The statistics of optical flow. Computer Vision and Image Understanding 2001; 82: 1–32, [CSA], [CROSSREF]
- Fleet D J, Jepson A D. Computation of component image velocity from local phase information. Int J Computer Vision 1990; 5: 77–104, [CSA], [CROSSREF]
- Gautama T, Van Hulle M M. A phase-based approach to the estimation of the optical flow field using spatial filtering. IEEE Trans. on Neural Networks 2002; 13: 1127–1136, [CSA], [CROSSREF]
- Granlund G H, Knutsson H. Signal Processing for Computer Vision. Kluwer Academic Publishers, Dordrecht 1995
- Huang J, Lee A B, Mumford D. Statistics of range images. CVPR 2000; 1: 1324–1331, [CSA]
- Hubel D H, Wiesel T N. Anatomical demonstration of columns in the monkey striate cortex. Nature 1969; 221: 747–750, [PUBMED], [INFOTRIEVE], [CSA]
- Jähne B. Digital Image Processing—Concepts, Algorithms, and Scientific Applications. Springer, New York 1997
- Johnston A, Clifford C WG. A unified account of three apparent motion illusions. Vision Res 1995; 35: 1109–1123, [PUBMED], [INFOTRIEVE], [CSA], [CROSSREF]
- Kalkan S, Calow D, Felsberg M, Wörgötter F, Lappe M, Krüger N. Optic flow statistics and intrinsic dimensionality. Proc. of Brain Inspired Cognitive Systems, Scotland, 2004, available at http://www.cs.stir.ac.uk/lss/BICS2004/CD/toc.html
- Koenderink J J, Dorn A J. The shape of smooth objects and the way contours end. Perception 1982; 11: 129–173, [PUBMED], [INFOTRIEVE], [CSA]
- Krüger N. Collinearity and parallelism are statistically significant second order relations of complex cell responses. Neural Processing Letters 1998; 8: 117–129, [CSA], [CROSSREF]
- Krüger N, Felsberg M. A continuous formulation of intrinsic dimension. Proceedings of the British Machine Vision Conference. 2003
- Krüger N, Felsberg M, Wörgötter F. Processing multi-modal primitives from image sequences. Fourth International ICSC Symposium on ENGINEERING OF INTELLIGENT SYSTEMS. 2004
- Krüger N, Wörgötter F. Statistical and deterministic regularities: Utilisation of motion and grouping in biological and artificial visual systems. Advances in Imaging and Electron Physics 2004; 131: 82–147, [CSA]
- Lappe M, Bremmer F, van den Berg A V. Perception of self-motion from visual flow. Trends in Cognitive Sciences 1999; 3: 329–336, [PUBMED], [INFOTRIEVE], [CSA], [CROSSREF]
- Lucas B, Kanade T. An iterative image registration technique with an application to stereo vision. Proc. DARPA Image Understanding Workshop. 1981, pp. 121–130
- Mota C, Barth E. On the uniqueness of curvature features. Proc. in Artificial Intelligence 2000; 9: 175–178, [CSA]
- Nagel H-H, Enkelmann W. An investigation of smoothness constraints for the estimation of displacement vector fields from image sequences. IEEE Transactions on Pattern Analysis and Machine Intelligence 1986; 8: 565–593, [CSA]
- Nagel H-H, Haag M. Bias-corrected optical flow estimation for road vehicle tracking. Proc. International Conference on Computer Vision, BombayIndia, 1998, pp. 1006–1011
- Parida L, Geiger D, Hummel R. Junctions: detection, classification and reconstruction. IEEE Trans. on Pattern Analysis and Machine Intelligence 1998; 20: 687–698, [CSA], [CROSSREF]
- Princen J, Illingworth J, Kittler J. An optimizing line finder using a Hough transform algorithm. Computer Vision, Graphics, and Image Proc 1990; 52: 57–77, [CSA]
- Ribeiro E, Hancock E R. Shape from periodic texture using the eigenvectors of local affine distortion. IEEE Transactions on Pattern Analysis and Machine Intelligence 2001; 23: 1459–1465, [CSA], [CROSSREF]
- Rohr K. Recognizing corners by fitting parametric models. Int J Computer Vision 1992; 9: 213–230, [CSA], [CROSSREF]
- Rosenhahn B. Pose Estimation Revisited PhD Thesis. Institut für Informatik und praktische Mathematik, Chrsitian—Albrechts Universität Kiel. 2003
- Rosenhahn B, Sommer G. Adaptive pose estimation for different corresponding entities. Pattern Recognition, 24th DAGM Symposium. 2002, L. van Gool. Springer Verlag, pp. 265–273
- Shevelev I A, Lazareva N A, Tikhomirov A S, Sharev G A. Sensitivity to cross-like figures in the cat striate neurons. Neuroscience 1995; 61: 965–973, [CSA], [CROSSREF]
- Shevlin F. Analysis of orientation problems using Plücker lines. Int Conference on Pattern Recognition, Bisbane 1998; 1: 65–689, [CSA]
- Simoncelli E P, Adelson E H, Heeger D J. Probability distributions of optical flow. Proc. IEEE Conference on Computer Vision and Pattern Recognition, Maui, Hawaii, 1991, pp. 310–315
- Sochen N, Kimmel R, Malladi R. A general framework for low level vision. IEEE Transactions on Image Processing 1998; 7: 310–318, [CSA], [CROSSREF]
- Wegmann B, Zetzsche C. Statistical dependence between orientation filter outputs used in a human-vision-based image code. Proc. SPIE. 1990. Vol. 1360: p. 909–923, Visual Communications and Image Processing '90: Fifth in a Series, Murat Kunt; Ed. pp. 909–923, September 1990.
- Zetzsche C, Barth E. Fundamental limits of linear filters in the visual processing of two dimensional signals. Vision Research 1990; 30: 1111–1117, [PUBMED], [INFOTRIEVE], [CSA], [CROSSREF]
- Zetzsche C, Barth E, Berkmann J. Spatio-temporal curvature measures for flow field analysis. Geometric Methods in Computer Vision 1991; 1570: 337–350, [CSA]