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New fractional-order Legendre-Fourier moments for pattern recognition applications

Research Authors
Khalid M Hosny, Mohamed M Darwish, Tarek Aboelenen
Research Abstract

Orthogonal moments enable computer-based systems to discriminate between similar objects. Mathe- maticians proved that the orthogonal polynomials of fractional-orders outperformed their corresponding counterparts in representing the fine details of a given function. In this work, novel orthogonal fractional- order Legendre-Fourier moments are proposed for pattern recognition applications. The basis functions of these moments are defined and the essential mathematical equations for the recurrence relations, orthog- onality and the similarity transformations (rotation and scaling) are derived. The proposed new fractional- order moments are tested where their performance is compared with the existing orthogonal quaternion, multi-channel and fractional moments. New descriptors were found to be superior to the existing ones in terms of accuracy, stability, noise resistance, invariance to similarity transformations, recognition rates and computational times.

Research Department
Research Journal
Pattern Recognition
Research Publisher
NULL
Research Rank
1
Research Vol
103
Research Website
https://www.sciencedirect.com/science/article/abs/pii/S0031320320301278
Research Year
2020
Research Pages
NULL