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Hyper-heuristic method for multilevel thresholding image segmentation

机译:超启发式多阈值图像分割方法

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摘要

In digital image processing, one of the most relevant tasks is to classify pixels depending on their intensity level. To perform this process there exist different traditional methods as Otsu or Kapur, such methods are used to compute the thresholds that divide the histogram of the image into different groups. These methods are easy to implement for a single threshold; however, the computational effort is affected when more thresholds are required. Therefore, different meta-heuristic based approaches have been proposed, but each of them has its properties and limitations. So, this paper introduces an alternative concept to the image segmentation which is called hyper-heuristic that at each iteration determines the optimal execution sequence of meta-heuristic algorithms that provides the optimal thresholds. The proposed method consists of two layers, in the first layer, the genetic algorithm (GA) is used to determine the execution sequence of the meta-heuristic algorithms. While the second layer contains the set of four meta-heuristic algorithms that executed in a specific order, assigned by the current solution of GA, to update the threshold population. In order to evaluate the performance of the proposed approach, it has been tested over a set of benchmark images and the results provide a good performance in terms of quality of segmentation. Moreover, experimental comparisons support that the proposed hyper-heuristic is able to find more accurate solutions than other algorithms. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在数字图像处理中,最相关的任务之一是根据像素的强度级别对像素进行分类。为了执行此过程,存在不同的传统方法,例如Otsu或Kapur,这些方法用于计算将图像直方图分为不同组的阈值。这些方法对于单个阈值很容易实现;但是,当需要更多阈值时,计算工作会受到影响。因此,已经提出了不同的基于元启发式的方法,但是每种方法都有其属性和局限性。因此,本文介绍了图像分割的另一种概念,称为超启发式,它在每​​次迭代时确定提供最佳阈值的元启发式算法的最佳执行顺序。所提出的方法由两层组成,在第一层中,遗传算法(GA)用于确定元启发式算法的执行顺序。第二层包含四个元启发式算法集,这些算法以特定顺序执行(由GA当前解决方案分配),以更新阈值填充。为了评估所提出方法的性能,已在一组基准图像上进行了测试,结果在分割质量方面提供了良好的性能。此外,实验比较支持所提出的超启发式方法能够找到比其他算法更准确的解决方案。 (C)2020 Elsevier Ltd.保留所有权利。

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