首页> 外文期刊>Research journal of applied science, engineering and technology >Abnormality Segmentation and Classification of Brain MR Images using Combined Edge, Texture Region Features and Radial basics Function
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Abnormality Segmentation and Classification of Brain MR Images using Combined Edge, Texture Region Features and Radial basics Function

机译:结合边缘,纹理区域特征和径向基函数的脑MR图像异常分割和分类

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Magnetic Resonance Images (MRI) are widely used in the diagnosis of Brain tumor. In this study we have developed a new approach for automatic classification of the normal and abnormal non-enhanced MRI images. The proposed method consists of four stages namely Preprocessing, feature extraction, feature reduction and classification. In the first stage anisotropic filter is applied for noise reduction and to make the image suitable for extracting the features. In the second stage, Region growing base segmentation is used for partitioning the image into meaningful regions. In the third stage, combined edge and Texture based features are extracted using Histogram and Gray Level Co-occurrence Matrix (GLCM) from the segmented image. In the next stage PCA is used to reduce the dimensionality of the Feature space which results in a more efficient and accurate classification. Finally, in the classification stage, a supervised Radial Basics Function (RBF) classifier is used to classify the experimental images into normal and abnormal. The obtained experimental are evaluated using the metrics sensitivity, specificity and accuracy. For comparison, the performance of the proposed technique has significantly improved the tumor detection accuracy with other neural network based classifier SVM, FFNN and FSVM.
机译:磁共振图像(MRI)被广泛用于脑肿瘤的诊断。在这项研究中,我们开发了一种对正常和异常的非增强MRI图像进行自动分类的新方法。该方法包括预处理,特征提取,特征约简和分类四个阶段。在第一阶段,应用各向异性滤镜来降低噪声并使图像适合于提取特征。在第二阶段,使用区域增长基本分割将图像划分为有意义的区域。在第三阶段,使用直方图和灰度共生矩阵(GLCM)从分割的图像中提取基于边缘和纹理的组合特征。在下一阶段,将PCA用于减少特征空间的维数,从而实现更有效和准确的分类。最后,在分类阶段,使用监督径向基函数(RBF)分类器将实验图像分类为正常图像和异常图像。使用度量的敏感性,特异性和准确性对获得的实验进行评估。为了进行比较,提出的技术的性能与其他基于神经网络的分类器SVM,FFNN和FSVM相比,显着提高了肿瘤检测的准确性。

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