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Multi-level thresholding-based grey scale image segmentation using multi-objective multi-verse optimizer

机译:基于多级别阈值的灰度图像分割,使用多目标多韵顿优化器

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Image segmentation is among the most important techniques in image processing, and many methods have been developed to perform this task. This paper presents a new multi-objective metaheuristic based on a multi-verse optimization algorithm to segment grayscale images via multi-level thresholding. The proposed approach involves finding an approximate Pareto-optimal set by maximizing the Kapur and Otsu objective functions. Both Kapur's and Otsu's methods are highly used for image segmentation performed by means of bi-level and multi-level thresholding. However, each of them has certain characteristics and limitations. Several metaheuristic approaches have been proposed in the literature to separately optimize these objective functions in terms of accuracy, whereas only a few multi-objective approaches have explored the benefits of the joint use of Kapur and Otsu's methods. However, the computational cost of Kapur and Otsu is high and their accuracy needs to be improved. The proposed method, called Multi-objective Multi-verse Optimization, avoids these limitations. It was tested using 11 natural grayscale images and its performance was compared against three of well-known multi-objective algorithms. The results were analyzed based on two sets of measures, one to assess the performance of the proposed method as a multi-objective algorithm, and the other to evaluate the accuracy of the segmented images. The results showed that the proposed method provides a better approximation to the optimal Pareto Front than the other algorithms in terms of hypervolume and spacing. Moreover, the quality of its segmented image is better than those of the other methods in terms of uniformity measures. (C) 2019 Elsevier Ltd. All rights reserved.
机译:图像分割是图像处理中最重要的技术之一,并且已经开发了许多方法来执行此任务。本文基于多韵优化算法,通过多级阈值划分灰度图像的多韵优化算法,提出了一种新的多目标地质训练。所提出的方法涉及通过最大化Kapur和Otsu目标功能来找到近似静态最佳集合。 KAPUR和OTSU的方法都高度用于通过双级和多级别阈值处理执行的图像分割。然而,每个人都有一定的特征和局限性。在文献中提出了几种成交方法,以便在准确性方面分别优化这些目标职能,而只有几种多目标方法探讨了KAPUR和OTSU的联合使用的益处。然而,Kapur和Otsu的计算成本很高,并且需要改善其准确性。所提出的方法称为多目标多节能,避免了这些限制。它使用11个自然灰度图像测试,并将其性能与三种众所周知的多目标算法进行比较。结果基于两组措施,一个评估所提出的方法的性能作为多目标算法的性能,另一组用于评估分段图像的准确性。结果表明,所提出的方法为优于多种算法和超空间的其他算法提供了更好的近似。此外,其分段图像的质量优于均匀度措施方面的其他方法的质量。 (c)2019 Elsevier Ltd.保留所有权利。

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