2024
DOI: 10.3390/ai5030067
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Fractional Calculus Meets Neural Networks for Computer Vision: A Survey

Cecília Coelho,
M. Fernanda P. Costa,
Luís L. Ferrás

Abstract: Traditional computer vision techniques aim to extract meaningful information from images but often depend on manual feature engineering, making it difficult to handle complex real-world scenarios. Fractional calculus (FC), which extends derivatives to non-integer orders, provides a flexible way to model systems with memory effects and long-term dependencies, making it a powerful tool for capturing fractional rates of variation. Recently, neural networks (NNs) have demonstrated remarkable capabilities in learni… Show more

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