Paper
8 March 2002 Fast invariant recognition for color 3D images based on Hurwitzon-valued moments and invariants
Valeri Labounets, Ekaterina V. Labunets-Rundblad, Jaakko T. Astola
Author Affiliations +
Abstract
There is currently a considerable interest in methods of invariant 3D image recognition. Indeed, very often information about 3D objects can be obtained by computer tomographic reconstruction, 3D magnetic resonance imaging, passive 3D sensors or active range finders. Due to that algorithms of systematic derivation of 3D moment invariants should be developed for 3D color object recognition. In this work we proposed an elegant theory which allows to describe many such invariants. Our theory is based on the theory of triplet numbers and quaternions. We propose Hurwitzon--valued invariants, which are related to the descriptions of objects as the zero sets of implicit polynomials. These are global invariants which show great promise for recognition of complicated objects. Hurwitzon--valued invariants have good discriminating power for computer recognition of 3Dcolour objects using statistical pattern recognition methods. For fast computation of Hurwitzon--valued invariants we use modular arithmetic of Galois fields and rings, which maps calculation of invariants to fast number theoretical Fourier--Galois--Hamilton--transform.
© (2002) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Valeri Labounets, Ekaterina V. Labunets-Rundblad, and Jaakko T. Astola "Fast invariant recognition for color 3D images based on Hurwitzon-valued moments and invariants", Proc. SPIE 4738, Wavelet and Independent Component Analysis Applications IX, (8 March 2002); https://doi.org/10.1117/12.458747
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
3D image processing

RGB color model

Atrial fibrillation

Vector spaces

Algorithm development

Colorimetry

Quantum efficiency

Back to Top