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A novel Black Widow Optimization algorithm for multilevel thresholding image segmentation

机译:一种新型黑寡妇阈值算法,用于多级阈值阈值图像分割

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摘要

Segmentation is a crucial step in image processing applications. This process separates pixels of the image into multiple classes that permits the analysis of the objects contained in the scene. Multilevel thresholding is a method that easily performs this task, the problem is to find the best set of thresholds that properly segment each image. Techniques as Otsu's between class variance or Kapur's entropy helps to find the best thresholds but they are computationally expensive for more than two thresholds. To overcome such problem this paper introduces the use of the novel meta-heuristic algorithm called Black Widow Optimization (BWO) to find the best threshold configuration using Otsu or Kapur as objective function. To evaluate the performance and effectiveness of the BWO-based method, it has been considered the use of a variety of benchmark images, and compared against six well-known meta-heuristic algorithms including; the Gray Wolf Optimization (GWO), Moth Flame Optimization (MFO), Whale Optimization Algorithm (WOA), Sine-Cosine Algorithm (SCA), Slap Swarm Algorithm (SSA), and Equilibrium Optimization (EO). The experimental results have revealed that the proposed BWO-based method outperform the competitor algorithms in terms of the fitness values as well as the others performance measures such as PSNR, SSIM and FSIM. The statistical analysis manifests that the BWO-based method achieves efficient and reliable results in comparison with the other methods. Therefore, BWO-based method was found to be most promising for multi-level image segmentation problem over other segmentation approaches that are currently used in the literature.
机译:分段是图像处理应用中的重要步骤。该过程将图像的像素分开到多个类中,允许分析场景中包含的对象。多级别阈值是一种容易执行此任务的方法,问题是找到正确段段的最佳阈值集合。作为OTSU在类方差或Kapur的熵之间的技术有助于找到最佳阈值,但它们的计算非常昂贵超过两个阈值。为了克服此类问题,本文介绍了使用称为黑寡妇优化(BWO)的新型元启发式算法使用Otsu或Kapur作为客观函数找到最佳阈值配置。为了评估基于BWO的方法的性能和有效性,已经考虑了使用各种基准图像,并与六个众所周知的元启发式算法进行比较,包括;灰狼优化(GWO),蛾火焰优化(MFO),鲸井优化算法(WOA),正弦余弦算法(SCA),SLAP群算法(SSA)和均衡优化(EO)。实验结果表明,所提出的基于BWO的方法在健身值方面优于竞争对手算法,以及其他性能措施,如PSNR,SSIM和FSIM。统计分析表明,与其他方法相比,基于BWO的方法实现了高效且可靠的结果。因此,发现基于BWO的方法对于当前在文献中使用的其他分段方法进行多级图像分割问题最有希望。

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