IEEE Trans Image Process. 2015 Aug;24(8):2540-51. doi: 10.1109/TIP.2015.2426021. Epub 2015 Apr 24.
Texture characterization is a central element in many image processing applications. Multifractal analysis is a useful signal and image processing tool, yet, the accurate estimation of multifractal parameters for image texture remains a challenge. This is due in the main to the fact that current estimation procedures consist of performing linear regressions across frequency scales of the 2D dyadic wavelet transform, for which only a few such scales are computable for images. The strongly non-Gaussian nature of multifractal processes, combined with their complicated dependence structure, makes it difficult to develop suitable models for parameter estimation. Here, we propose a Bayesian procedure that addresses the difficulties in the estimation of the multifractality parameter. The originality of the procedure is threefold. The construction of a generic semiparametric statistical model for the logarithm of wavelet leaders; the formulation of Bayesian estimators that are associated with this model and the set of parameter values admitted by multifractal theory; the exploitation of a suitable Whittle approximation within the Bayesian model which enables the otherwise infeasible evaluation of the posterior distribution associated with the model. Performance is assessed numerically for several 2D multifractal processes, for several image sizes and a large range of process parameters. The procedure yields significant benefits over current benchmark estimators in terms of estimation performance and ability to discriminate between the two most commonly used classes of multifractal process models. The gains in performance are particularly pronounced for small image sizes, notably enabling for the first time the analysis of image patches as small as 64 × 64 pixels.
纹理特征化是许多图像处理应用中的一个核心要素。多重分形分析是一种有用的信号和图像处理工具,然而,准确估计图像纹理的多重分形参数仍然是一个挑战。这主要是因为目前的估计程序包括在二维二进小波变换的频率尺度上执行线性回归,而对于图像,只有少数这样的尺度是可计算的。多重分形过程强烈的非高斯性质,加上它们复杂的依赖结构,使得为参数估计开发合适的模型变得困难。在这里,我们提出了一种贝叶斯方法来解决多重分形参数估计中的困难。该方法的创新性体现在三个方面:构建了一个用于小波主导对数的通用半参数统计模型;为该模型和多重分形理论所允许的参数值集制定了贝叶斯估计量;在贝叶斯模型中利用了一种合适的 Whittle 逼近,从而能够评估与该模型相关联的后验分布,否则这是不可行的。针对几种二维多重分形过程、几种图像大小和广泛的过程参数对性能进行了数值评估。与当前的基准估计器相比,该方法在估计性能和区分两种最常用的多重分形过程模型的能力方面具有显著优势。对于小图像大小,性能的提高尤为明显,特别是首次能够分析小至 64×64 像素的图像块。