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Wavelet Leaders And Bootstrap For Multifractal Analysis Of Images

机译:小波前导和自举用于图像的多重分形分析

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摘要

Multifractal analysis is considered a promising tool for image processing, notably for texture characterization. However, practical operational estimation procedures based on a theoretically well established multifractal analysis are still lacking for image (as opposed to signal) processing. Here, a wavelet leader based multifractal analysis, known to be theoretically strongly grounded, is described and assessed for 2D functions (images). By means of Monte Carlo simulations conducted over both self-similar and multiplicative cascade synthetic images, it is shown here to benefit from much better practical estimation performances than those obtained from a 2D discrete wavelet transform coefficient analysis. Furthermore, this is complemented by the original analysis and design of procedures aiming at practically assessing and handling the theoretical function space embedding requirements faced by multifractal analysis. In addition, a bootstrap based statistical approach developed in the wavelet domain is proposed and shown to enable the practical computation of accurate confidence intervals for multifractal attributes from a given image. It is based on an original joint time and scale block non-parametric bootstrap scheme. Performances are assessed by Monte Carlo simulations. Finally, the use and relevance of the proposed wavelet leader and bootstrap based tools are illustrated at work on real-world images.
机译:多重分形分析被认为是用于图像处理,尤其是用于纹理表征的有前途的工具。但是,对于图像(与信号相反)处理,仍然缺乏基于理论上公认的多重分形分析的实用操作估计程序。在此,描述并评估2D函数(图像)的基于小波前导的多重分形分析,该分析在理论上是牢固扎根的。通过对自相似和乘积级联合成图像进行的蒙特卡罗模拟,与从2D离散小波变换系数分析获得的结果相比,此处显示出的评估结果要好得多。此外,这是对原始分析和程序设计的补充,旨在实际评估和处理多重分形分析所面临的理论功能空间嵌入要求。另外,提出并示出了在小波域中开发的基于自举的统计方法,该统计方法能够针对给定图像的多重分形属性进行精确的置信区间的实际计算。它基于原始的联合时间和比例块非参数引导程序。通过蒙特卡洛模拟评估性能。最后,在实际图像上的工作中说明了所提出的基于小波前导和自举的工具的使用和相关性。

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