[1] Y. LeCun, F.J. Huang, and L. Bottou, “Learning methods for generic object recognition with invariance to pose and lighting,” Proc. of IEEE Conference on Computer Vision and Pattern Recognition, 97–104, 2004.
[2] M. Riesenhuber, and T. Poggio, “Hierarchical models of object recognition in cortex,” Nature Neuroscience 211: 1019–1025, 1999.
[3] B.A. Olshausen, C.H. Anderson, and D.C. Van Essen, “A neurobiological model of visual attention and invariant pattern recognition based on dynamic routing of information,” J Neurosc 13: 4700–4719, 1993.
[4] Lades, M., Vorbrüggen, J. C., Buhmann, J., Lange, J., von der Malsburg, C., Würtz, R. P., and Konen, W,“Distortion invariant object recognition in the dynamic link architecture,” IEEE Trans Comp 42:300-311, 1993.
[5] J. Lücke, C. Keck, and C. von der Malsburg, “Rapid convergence to feature layer correspondences,” Neural Computation 20: 2441–2463, 2008.
[6] G. Hinton, “A parallel computation that assigns canonical object-based frames of reference,” Proc. of the Seventh International Joint Conference on Artificial Intelligence, 2, 683–685, 1981.
[7] C.K. Williams and M.K. Titsias, “Greedy learning of multiple objects in images using robust statistics and factorial learning,” Neural Computation, 16: 1039-1062, 2004.