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Fast multilevel thresholding for image segmentation through a multiphase level set method

机译:通过多阶段水平集方法进行图像分割的快速多水平阈值

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摘要

For the image segmentation by the histogram bilevel thresholding, several methods have been proposed. However, they are computationally time consuming and their effectiveness is reduced when applied to a complex image and when the number of the different regions composing this image is high. In this paper, a fast and efficient method for segmenting complex images is proposed. This method is based on the determination of the number and the values of the thresholds required for the segmentation by introducing a new multilevel thresholding technique using a multiphase level set technique. First, the gray-level histogram of the image is approximated by a weighted sum of Heaviside functions by using the Chan-Vese segmentation model. In order to obtain a better approximation of this histogram and to speed up the calculations, an improved version of the multiphase level set method is introduced. The valleys are then highlighted and isolated by deriving the approximated histogram so that the thresholds are easily extracted by searching the minima of these valleys. Experimental results and a comparative study with three other efficient and known multilevel thresholding methods over synthetic and real images have shown that the proposed method offers very good segmentation results with a low computing time, whatever the complexity of the image and the number of regions composing it.
机译:对于通过直方图双水平阈值分割的图像,已经提出了几种方法。但是,它们在计算上很费时,并且当应用于复杂图像时以及当组成该图像的不同区域的数量很高时,它们的有效性会降低。本文提出了一种快速有效的分割复杂图像的方法。该方法基于通过使用多相水平集技术引入新的多水平阈值技术来确定分割所需的阈值的数量和值。首先,通过使用Chan-Vese分割模型,通过Heaviside函数的加权和来近似图像的灰度直方图。为了获得更好的直方图近似值并加快计算速度,引入了改进的多相水平设置方法。然后通过推导近似的直方图来突出显示并隔离山谷,以便通过搜索这些山谷的最小值轻松提取阈值。实验结果以及与其他三种有效的已知多级阈值化方法对合成图像和真实图像进行的比较研究表明,无论图像的复杂程度和组成图像的区域数量如何,所提出的方法都能以较低的计算时间提供非常好的分割结果。

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