2023
DOI: 10.3390/fractalfract7110826
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Efficient Analysis of Large-Size Bio-Signals Based on Orthogonal Generalized Laguerre Moments of Fractional Orders and Schwarz–Rutishauser Algorithm

Eman Abdullah Aldakheel,
Doaa Sami Khafaga,
Islam S. Fathi
et al.

Abstract: Orthogonal generalized Laguerre moments of fractional orders (FrGLMs) are signal and image descriptors. The utilization of the FrGLMs in the analysis of big-size signals encounters three challenges. First, calculating the high-order moments is a time-consuming process. Second, accumulating numerical errors leads to numerical instability and degrades the reconstructed signals’ quality. Third, the QR decomposition technique is needed to preserve the orthogonality of the higher-order moments. In this paper, the a… Show more

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“…This compression technique is based on the mathematical constructs of fractals, which are self-similar patterns, where a part of the structure resembles the whole. This approach to digital image compression tends to be lossy [60,61]. The principle behind it is to find selfsimilar sections of an image and then use fractal mathematics to represent these sections.…”
Section: Fractal Compressionmentioning
confidence: 99%
“…This compression technique is based on the mathematical constructs of fractals, which are self-similar patterns, where a part of the structure resembles the whole. This approach to digital image compression tends to be lossy [60,61]. The principle behind it is to find selfsimilar sections of an image and then use fractal mathematics to represent these sections.…”
Section: Fractal Compressionmentioning
confidence: 99%