Box-Counting Dimension Sequences of Level Sets in AI-Generated Fractals

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초록

We introduce a mathematical framework to characterize the hierarchical complexity of AI-generated fractals within the finite resolution constraints of digital images. Our method analyzes images produced by text-to-image models at multiple intensity thresholds, employing a discrete level set approach and box-counting dimension estimates. By conducting experiments on fractals created with the FLUX model at a resolution of (Formula presented.), we identify a fully monotonic behavior in the dimension sequences for various box sizes, with inter-scale correlations surpassing 0.95. Pattern-specific dimensional gradients quantify how fractal complexity changes with threshold levels, offering insights into how text-to-image models encode fractal-like geometry through dimensional sequences. © 2024 by the authors.

키워드

box-counting dimensioncomputer visiondigital image processingdiscrete mathematicsfractal dimension analysislevel set theorytext-to-image models
제목
Box-Counting Dimension Sequences of Level Sets in AI-Generated Fractals
저자
Lee, MinhyeokLee, Soyeon
DOI
10.3390/fractalfract8120730
발행일
2024-12
유형
Article
저널명
Fractal and Fractional
8
12

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