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Entropy-based imagery segmentation for breast histology using the Stochastic Fractal Search

机译:基于随机分形搜索的乳腺组织学基于熵的图像分割

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Breast cancer is one of the leading causes of death for women around the world. Its early diagnosis can significantly enhance the survival rate of the patient. Image processing techniques are used to help to diagnose this disease. The analysis of breast tissue samples on histological images is a challenging task where computer vision techniques can contribute. In this paper, the Stochastic Fractal Search (SFS) algorithm is applied to the image thresholding problem on breast histology imagery using as objective function three different entropies. The SFS is a new Evolutionary Algorithm (EA) which emulates the growth mechanism of fractals. SFS has been successfully applied to other applications, but its performance on image thresholding is unknown. The implementation of SFS is conducted using as objective function three of the most representative entropies being Kapur, Minimum Cross Entropy, and Tsallis. To provide a comparison point, two EAs commonly used for image thresholding are selected; the Artificial Bee Colony (ABC) and the Differential Evolution (DE). In this context, the resulting nine combinations are evaluated concerning the quality of the segmented images. Since the nine evaluated methods share either EA or entropy, the nonparametric test of Kruskal-Wallis is conducted to analyze the similarity of the results among methods. Results indicate that the combination of SFS and Minimum Cross Entropy yields the best results for the segmentation of histological imagery. (C) 2018 Elsevier B.V. All rights reserved.
机译:乳腺癌是全世界妇女死亡的主要原因之一。其早期诊断可以显着提高患者的生存率。图像处理技术用于帮助诊断这种疾病。在组织学图像上分析乳房组织样本是一项艰巨的任务,计算机视觉技术可以发挥作用。本文将随机分形搜索(SFS)算法应用于乳腺组织学图像的图像阈值问题,使用三个不同的熵作为目标函数。 SFS是一种新的进化算法(EA),可模拟分形的增长机制。 SFS已成功应用于其他应用程序,但其图像阈值处理的性能尚不清楚。 SFS的实现是使用最有代表性的三个熵作为目标函数来进行的:Kapur,最小交叉熵和Tsallis。为了提供一个比较点,选择了两个通常用于图像阈值处理的EA。人工蜂群(ABC)和差异进化(DE)。在这种情况下,将评估所得的九种组合,这些组合涉及分割图像的质量。由于这九种评估方法共享EA或熵,因此进行了Kruskal-Wallis的非参数检验,以分析方法之间结果的相似性。结果表明,SFS和最小交叉熵的组合对于组织学图像的分割产生了最佳结果。 (C)2018 Elsevier B.V.保留所有权利。

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