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JOURNALS // Trudy Instituta Matematiki i Mekhaniki UrO RAN // Archive

Trudy Inst. Mat. i Mekh. UrO RAN, 2020 Volume 26, Number 3, Pages 69–83 (Mi timm1746)

This article is cited in 2 papers

Hypercomplex Models of Multichannel Images

V. G. Labunets

Ural State Forest Engineering University

Abstract: We present a new theoretical approach to the processing of multidimensional and multicomponent images based on the theory of commutative hypercomplex algebras, which generalize the algebra of complex numbers. The main goal of the paper is to show that commutative hypercomplex numbers can be used in multichannel image processing in a natural and effective manner. We suppose that animal brains operate with hypercomplex numbers when processing multichannel retinal images. In our approach, each multichannel pixel is regarded as a $K$-dimensional ($K$D) hypercomplex number rather than a $K$D vector, where $K$ is the number of different optical channels. This creates an effective mathematical basis for various function–number transformations of multichannel images and invariant pattern recognition.

Keywords: multichannel images, hypercomplex algebras, image processing.

UDC: 621.391

MSC: 41A45, 42B05, 35S05, 58J40

Received: 12.05.2020
Revised: 10.06.2020
Accepted: 06.07.2020

DOI: 10.21538/0134-4889-2020-26-3-69-83


 English version:
Proceedings of the Steklov Institute of Mathematics (Supplementary issues), 2021, 313, suppl. 1, S155–S168

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