论文标题

图像正态性和模式分类的盒子转换

On Box-Cox Transformation for Image Normality and Pattern Classification

论文作者

Cheddad, Abbas

论文摘要

功率转化家族的独特成员被称为盒子型转换。后者可以看作是一种数学操作,导致找到最佳的lambda(λ)值,该值最大化了对数 - 样式函数,以将数据转换为正态分布并降低异方差。在数据分析中,正态性假设是多种统计测试模型的基础。但是,该技术在统计分析中最著名,以处理一维数据。本文中,本文围绕着这种工具的实用性,作为转换二维数据的预处理步骤,即数字图像并研究其效果。此外,为了降低时间复杂性,对于大型二维矩阵实时估算参数lambda就足够了,仅将其概率密度函数视为基础数据分布的统计推断。我们将这种轻巧的盒子转换与完善的最先进的低光图像增强技术进行了比较。我们还通过几个测试床数据集证明了方法的有效性,以通用图像的视觉外观,并改善颜色模式分类算法的性能作为示例应用程序。使用ALEXNET(转移深度学习)预处理模型比较有或没有提出方法的结果。据我们所知,这是第一次通过利用直方图转换扩展到数字图像。

A unique member of the power transformation family is known as the Box-Cox transformation. The latter can be seen as a mathematical operation that leads to finding the optimum lambda (λ) value that maximizes the log-likelihood function to transform a data to a normal distribution and to reduce heteroscedasticity. In data analytics, a normality assumption underlies a variety of statistical test models. This technique, however, is best known in statistical analysis to handle one-dimensional data. Herein, this paper revolves around the utility of such a tool as a pre-processing step to transform two-dimensional data, namely, digital images and to study its effect. Moreover, to reduce time complexity, it suffices to estimate the parameter lambda in real-time for large two-dimensional matrices by merely considering their probability density function as a statistical inference of the underlying data distribution. We compare the effect of this light-weight Box-Cox transformation with well-established state-of-the-art low light image enhancement techniques. We also demonstrate the effectiveness of our approach through several test-bed data sets for generic improvement of visual appearance of images and for ameliorating the performance of a colour pattern classification algorithm as an example application. Results with and without the proposed approach, are compared using the AlexNet (transfer deep learning) pretrained model. To the best of our knowledge, this is the first time that the Box-Cox transformation is extended to digital images by exploiting histogram transformation.

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