Litcius/Paper detail

Quaternion fractional-order color orthogonal moment-based image representation and recognition

Bing He, Jun Liu, Tengfei Yang, Bin Xiao, Yanguo Peng

2021EURASIP Journal on Image and Video Processing16 citationsDOIOpen Access PDF

Abstract

Abstract Inspired by quaternion algebra and the idea of fractional-order transformation, we propose a new set of quaternion fractional-order generalized Laguerre orthogonal moments (QFr-GLMs) based on fractional-order generalized Laguerre polynomials. Firstly, the proposed QFr-GLMs are directly constructed in Cartesian coordinate space, avoiding the need for conversion between Cartesian and polar coordinates; therefore, they are better image descriptors than circularly orthogonal moments constructed in polar coordinates. Moreover, unlike the latest Zernike moments based on quaternion and fractional-order transformations, which extract only the global features from color images, our proposed QFr-GLMs can extract both the global and local color features. This paper also derives a new set of invariant color-image descriptors by QFr-GLMs, enabling geometric-invariant pattern recognition in color images. Finally, the performances of our proposed QFr-GLMs and moment invariants were evaluated in simulation experiments of correlated color images. Both theoretical analysis and experimental results demonstrate the value of the proposed QFr-GLMs and their geometric invariants in the representation and recognition of color images.

Topics & Concepts

QuaternionInvariant (physics)Laguerre polynomialsZernike polynomialsMathematicsOrthogonal basisCartesian coordinate systemArtificial intelligenceOrthogonalizationPolar coordinate systemColor spaceOrthogonal polynomialsPattern recognition (psychology)Computer visionComputer scienceAlgorithmPure mathematicsImage (mathematics)GeometryPhysicsMathematical physicsQuantum mechanicsOpticsWavefrontImage Retrieval and Classification TechniquesAdvanced Image and Video Retrieval TechniquesImage Processing Techniques and Applications