A Hybrid Method for Magnetic Resonance Brain Images Classification and Segmentation Using Soft Computing Techniques

Baireddy Sreenivasa Reddy, A. Sathish
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引用次数: 0

Abstract

Nowadays, Brain tumor is a serious life-threatening disease that can often be treated with risky surgeries. Various classification and segmentation methods for MR (Magnetic Resonance) brain images have been proposed but the expected accuracy value could not be reached so far. In this paper, we proposed a hybrid approach that includes modified fuzzy C-means and ANN classifier. It consists of five stages (a) Noise removal (b) Feature extraction (c) Feature selection  (d) Classification (e) Segmentation. Initially, a genetic optimized median filter (GOMF) is used to remove noise present in the input image, and then the essential features are extracted and selected using Discrete Wavelet Transform (DWT) & Principle Component Analysis (PCA) algorithms respectively. The normal and abnormal images are classified using the ANN classifier. Finally, it is processed through a Modified fuzzy C-means algorithm to segment the tumor portion separately. The proposed segmentation technique has been tested on the BRATS dataset and produces a sensitivity of 98%, Jaccard index of 97%, specificity of 98%, and accuracy of 95%.
一种基于软计算技术的脑磁共振图像分类分割混合方法
如今,脑瘤是一种严重的危及生命的疾病,通常可以通过危险的手术进行治疗。已经提出了各种MR(磁共振)脑图像的分类和分割方法,但到目前为止还不能达到预期的准确性值。在本文中,我们提出了一种混合方法,包括改进的模糊C均值和人工神经网络分类器。它包括五个阶段(a)去噪(b)特征提取(c)特征选择(d)分类(e)分割。首先,使用遗传优化中值滤波器(GOMF)去除输入图像中的噪声,然后分别使用离散小波变换(DWT)和主成分分析(PCA)算法提取和选择基本特征。使用ANN分类器对正常图像和异常图像进行分类。最后,通过改进的模糊C均值算法对其进行处理,分别对肿瘤部分进行分割。所提出的分割技术已在BRATS数据集上进行了测试,其灵敏度为98%,Jaccard指数为97%,特异性为98%,准确率为95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
8.70
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