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1. Multiple feature models for image matching
Morales, J.; Verdu, R.; Sancho, J.L.; Weruaga, L.;
Image Processing, 2005. ICIP 2005. IEEE International Conference on
Volume 3,  11-14 Sept. 2005 Page(s):III - 1076-9
Abstract:

The common approach to image matching is to detect spatial features present in both images and create a mapping that relates both images. The main drawback of this method takes place when more than one matching is likely. A first simplification to this ambiguity is to represent with a parametric model the point locus where the matching is highly likely, and then use a POCS (projection onto convex sets) procedure combined with Tikhonov regularization that results in the mapping vectors. However, if there is more than one model per pixel, the regularization and constraint-forcing process faces a multiple-choice dilemma that has no easy solution. This work proposes a framework to overcome this drawback: the combined projection over multiple models based on the Lk, norm of the projection-point distance. This approach is tested on a stereo-pair that presents multiple choices of similar likelihood.
Abstract | Full Text: PDF(288 KB)    IEEE CNF
 
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