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Fractional Differentiation And Non-pareto Multiobjective Optimization For Image Thresholding

机译:图像阈值的分数微分和非奇异多目标优化

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Various techniques have previously been proposed for single-stage thresholding of images to separate objects from the background. Although these global or local thresholding techniques have proven effective on particular types of images, none of them is able to produce consistently good results on a wide range of existing images. Here, a new image histogram thresholding method, called TDFD, based on digital fractional differentiation is presented for gray-level image thresholding. The proposed method exploits the properties of the digital fractional differentiation and is based on the assumption that the pixel appearance probabilities in the image are related. To select the best fractional differentiation order that corresponds to the best threshold', a new algorithm based on non-Pareto multiobjective optimization is presented. A new geometric regularity criterion is also proposed to select the best thresholded image. In order to illustrate the efficiency of our method, a comparison was performed with five competing methods: the Otsu method, the Kapur method, EM algorithm based method, valley emphasis method, and two-dimensional Tsallis entropy based method. With respect to the mode of visualization, object size and image contrast, the experimental results show that the segmentation method based on fractional differentiation is more robust than the other methods.
机译:先前已经提出了各种技术用于图像的单阶段阈值化以将对象与背景分离。尽管已证明这些全局或局部阈值处理技术对特定类型的图像有效,但它们均无法在各种现有图像上产生一致的良好结果。这里,提出了一种新的基于数字分数微分的图像直方图阈值化方法,称为TDFD,用于灰度图像阈值化。所提出的方法利用了数字分数微分的性质,并且基于图像中像素出现概率相关的假设。为了选择与最佳阈值相对应的最佳分数微分阶,提出了一种基于非帕累托多目标优化的新算法。还提出了一种新的几何规律性准则,以选择最佳的阈值图像。为了说明我们方法的效率,我们对5种竞争方法进行了比较:Otsu方法,Kapur方法,基于EM算法的方法,基于谷值强调的方法以及基于二维Tsallis熵的方法。在可视化模式,对象尺寸和图像对比度方面,实验结果表明,基于分数微分的分割方法比其他方法更健壮。

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