探索图像中相关性和非平稳性的非参数统计检验

A. Khademi, Danoush Hosseinzadeh, A. Venetsanopoulos, A. Moody
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引用次数: 18

摘要

这项工作提出了两种基于统计的技术来量化(有信心)随机2D数据(图像)是否相关或非平稳。传统上,这种探索性数据分析技术已经开发用于一维信号,如脑电图。本文提出了Mantel聚类检验的一种新应用,用于检验空间依赖性,并对传统的一维反向排列检验进行了新的二维扩展,用于检验数据的非平稳性。生成模拟数据(相关和非平稳),并进行多次旋转、缩放和平移,以测试技术的鲁棒性。Mantel的聚类测试在100%的情况下(包括旋转、缩放和平移(rst))正确地将图像分类为相关。对于反向排列测试的二维扩展,线性趋势分析正确地发现15/16个区域具有逐像素的非平稳性,非线性趋势分析正确地分类了除两种情况(14/16)之外的所有非平稳性(对于所有rst)。由于分类率高,这些技术相对不受RST变化的影响。这两个统计检验在医学成像(即建模)中有多种应用,并在本工作中进行了讨论。最后介绍了该工作的另一个应用,证明了这种测试统计量可以用作分类不同纹理的特征的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonparametric statistical tests for exploration of correlation and nonstationarity in images
This work proposes two statistical-based techniques to quantify (with confidence) whether random 2D data (images) are correlated or nonstationary. Traditionally, such exploratory data analysis techniques have been developed for 1D signals, such as EEG. This paper presents a new application of Mantel's test for clustering to examine spatial dependence and a novel 2D extension of the traditional 1D version of the reverse arrangements test to examine data nonstationary. Simulated data (correlated and nonstationary) were generated and subject to several rotations, scales and translations, in order to test the robustness of the techniques. Mantel's test for clustering correctly classified the images as correlated for 100% of the cases (including those with rotations, scales and translations (RSTs)). For the 2D extension of the reverse arrangements test, the linear trend analysis correctly found 15/16 regions to have pixel-wise nonstationarity, and the nonlinear trend analysis correctly classified nonstationarity in all but two cases (14/16) (for all RSTs). As a result of the high classification rates, the techniques are relatively invariant to changes in RST. These two statistical tests have a variety of applications in medical imaging (i.e. modeling), and are discussed in this work. An additional application of the work is presented in the end, demonstrating the possibility that such test statistics may be used as features to classify different textures.
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