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一种用于多阈值图像分割的鲸鱼优化算法与卡普尔熵的新融合:分析与验证

A new fusion of whale optimizer algorithm with Kapur's entropy for multi-threshold image segmentation: analysis and validations.

作者信息

Abdel-Basset Mohamed, Mohamed Reda, Abouhawwash Mohamed

机构信息

Zagazig Univesitry, Shaibet an Nakareyah, Zagazig 2, Zagazig, 44519 Ash Sharqia Governorate Egypt.

Department of Mathematics Faculty of Science, Mansoura University, Mansoura, 35516 Egypt.

出版信息

Artif Intell Rev. 2022;55(8):6389-6459. doi: 10.1007/s10462-022-10157-w. Epub 2022 Mar 21.

DOI:10.1007/s10462-022-10157-w
PMID:35342218
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8935268/
Abstract

The separation of an object from other objects or the background by selecting the optimal threshold values remains a challenge in the field of image segmentation. Threshold segmentation is one of the most popular image segmentation techniques. The traditional methods for finding the optimum threshold are computationally expensive, tedious, and may be inaccurate. Hence, this paper proposes an Improved Whale Optimization Algorithm (IWOA) based on Kapur's entropy for solving multi-threshold segmentation of the gray level image. Also, IWOA supports its performance using linearly convergence increasing and local minima avoidance technique (LCMA), and ranking-based updating method (RUM). LCMA technique accelerates the convergence speed of the solutions toward the optimal solution and tries to avoid the local minima problem that may fall within the optimization process. To do that, it updates randomly the positions of the worst solutions to be near to the best solution and at the same time randomly within the search space according to a certain probability to avoid stuck into local minima. Because of the randomization process used in LCMA for updating the solutions toward the best solutions, a huge number of the solutions around the best are skipped. Therefore, the RUM is used to replace the unbeneficial solution with a novel updating scheme to cover this problem. We compare IWOA with another seven algorithms using a set of well-known test images. We use several performance measures, such as fitness values, Peak Signal to Noise Ratio, Structured Similarity Index Metric, Standard Deviation, and CPU time.

摘要

通过选择最佳阈值将物体与其他物体或背景分离,在图像分割领域仍然是一个挑战。阈值分割是最流行的图像分割技术之一。传统的寻找最优阈值的方法计算成本高、繁琐且可能不准确。因此,本文提出了一种基于卡普尔熵的改进鲸鱼优化算法(IWOA),用于解决灰度图像的多阈值分割问题。此外,IWOA通过线性收敛增强和局部最小值避免技术(LCMA)以及基于排名的更新方法(RUM)来支持其性能。LCMA技术加速了解向最优解的收敛速度,并试图避免优化过程中可能出现的局部最小值问题。为此,它将最差解的位置随机更新到接近最佳解的位置,同时根据一定概率在搜索空间内随机更新,以避免陷入局部最小值。由于LCMA在将解更新为最佳解时使用了随机化过程,最佳解周围的大量解被跳过。因此,使用RUM通过一种新颖的更新方案来替换无益解,以解决这个问题。我们使用一组著名的测试图像将IWOA与其他七种算法进行比较。我们使用了几种性能指标,如适应度值、峰值信噪比、结构相似性指数度量、标准差和CPU时间。

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