Keypoints Selection in the Gauss Laguerre Transformed Domain
Author(s) -
Lorenzo Sorgi,
Nicola Cimminiello,
Alessandro Neri
Publication year - 2006
Publication title -
citeseer x (the pennsylvania state university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.20.56
Subject(s) - affine transformation , rotation (mathematics) , laguerre polynomials , domain (mathematical analysis) , computer science , artificial intelligence , gauss , pattern recognition (psychology) , selection (genetic algorithm) , computer vision , algorithm , mathematics , geometry , pure mathematics , mathematical analysis , physics , quantum mechanics
The present paper is devoted to the introduction of a novel technique to select keypoints from digital images and build representative and distinctive descriptors. The algorithm performs a multiresolution image analysis in the Laguerre Gauss transformed domain and collects in a local descriptor the transformed coefficients at multiple scales, of the keypoin t’s representative pattern. The rotation invariance of the Circular Harmonics and the multiscale approach make the system more robust than other descriptors to match patterns related by affine transformations.
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