Convergence of numerical box-counting and correlation integral multifractal analysis techniques

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摘要

A systematic study of the rate of convergence for a numerical box-counting and a numerical correlation integral algorithm for determining the generalized fractal dimension D(q) are described. The algorithms are applied to Euclidean point sets, Koch constructions, and a symmetric chaotic mapping. The results provide a basis for estimating the size of a fractal subset needed for measurement of the generalized dimension D(q). In particular, the number of points N5 required to assure 5% convergence of the algorithms is given within a factor of 4 by log10(N5) ≈ 2.54D(q) - 0.11 for the fractal sets studied here. Approximately 25 times as many points are needed for 1 % convergence. Approximately 0.1 times as many points are needed for 25% convergence. The box-based correlation integral algorithm employed in the present studies, which is well suited to the analysis of large data sets, is also described.

论文关键词:Image analysis,Generalized fractal dimension,Convergence,Box-counting multi-fractal analysis,Correlation integral multi-fractal analysis

论文评审过程:Received 26 March 1996, Revised 19 August 1996, Accepted 16 October 1996, Available online 7 June 2001.

论文官网地址:https://doi.org/10.1016/S0031-3203(96)00162-8