混合分类器:基于遗传灰狼优化的脑肿瘤分类和分割

Avinash Gopal
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引用次数: 30

摘要

这项工作采用了一种新的脑肿瘤分类技术,包括5个步骤,即“(i)去噪,(ii)颅骨剥离,(iii)分割,(iv)特征提取和(v)分类”。首先,在去噪过程中给出图像,然后使用面向熵的三边滤波器对噪声过程进行截断。随后,通过形态学分割和Otsu阈值分割,将去噪图像用于颅骨剥离处理。然后,使用自适应CLFAHE方法进行分割。分割完成后提取GLCM特征。这里的混合分类是指FNN和“贝叶斯正则化分类器”等2种分类器的杂交。在FNN中,隐藏神经元的最佳选择是一个非常重要的问题。本文提出了一种新的基于遗传算法的GWO (GA-GWO)混合概念方法。最后,用常规方法对所提方法的性能进行了评价,证明了所提方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid classifier: Brain Tumor Classification and Segmentation using Genetic-based Grey Wolf optimization
This work uses a novel brain tumor classification technique which comprises 5 steps like “(i) denoising, (ii) skull stripping, (iii) segmentation, (iv) feature extraction and (v) classification”. At first, the image is given in the denoising procedure, whereas the amputation of the noise process is performed by using an entropy-oriented trilateral filter. Subsequently, noise removed image is used to skull stripping procedure through morphology segmentation and Otsu thresholding. Then, the segmentation takes place using the adaptive CLFAHE method. GLCM features are extracted after finishing segmentation. Here, hybrid classification represents the hybridization of 2 classifiers such as FNN and “Bayesian regularization classifier”. The very important involvement lies in the best selecting of hidden neurons in FNN. In this paper, a novel genetic algorithm based GWO (GA-GWO) method is proposed that hybrids the conception. At last, the proposed method performance is evaluated with conventional techniques to show the supremacy of the proposed method.
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