Nonlinear correlation by using invariant identity vectors signatures to identify different species of fish

Autor: Josué Álvarez-Borrego, Claudia Fimbres-Castro
Rok vydání: 2013
Předmět:
Zdroj: SPIE Proceedings.
ISSN: 0277-786X
DOI: 10.1117/12.2025793
Popis: In this work a new methodology to recognize objects is presented. This system is invariant to position, rotation and scale by using identity vectors signatures I s obtained for both the target and the problem image. In this application, I s are obtained by means of a simplification of the main features of the original image in addition of the properties of the Fourier transform. The nonlinear correlation by using a k th law is used to obtain the digital correlation providing information on the similarity between different objects besides their great capacity to discriminate them even when are very similar. This new methodology recognizes objects in a more simple way providing a significant reduction of the image information of size m x n to one-dimensional vector of 1 x 256 consequently with low computational cost of approximately 0.02 s per image . In addition, the statistics of Euclidean distances is used as an alternative methodology for comparison of identity vectors signatures. Also, experiments were carried out in order to find the noise tolerance. The invariant to position, rotation and scale of this digital syst em was tested with different sp ecies of fish (real images). The results obtained have a confidence level above 95.4%. Keywords: identity vectors signatures, non linear correlation, pattern recognition, image processing, Euclidean distance
Databáze: OpenAIRE