MR Brain Tumor Classification and Segmentation Via Wavelets

T. Devi, G. Ramani, S. Arockiaraj
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引用次数: 13

Abstract

Timely, accurate detection of magnetic resonance (MR) images of brain is most important in the medical analysis. Many methods have already explained about the tumor classification in the literature. This paper explains the method of classifying MR brain images into normal or abnormal (affected by tumor), abnormality segments present in the image. This paper proposes DWT-discrete wavelet transform in first step to extract the image features from the given input image. To reduce the dimensions of the feature image principle component Analysis (PCA) is employed. Reduced extracted feature image is given to kernel support vector machine (KSVM) for processing. The data set has 90 brain MR images (both normal and abnormal) with seven common diseases. These images are used in KSVM process. Gaussian Radial Basis (GRB) kernel is used for the classification method proposed and yields maximum accuracy of 98% compared to linear kernel (LIN). From the analysis, compared with the existing methods GRB kernel method was effective. If this classification finds abnormal MR image with tumor then the corresponding part is separated and segmented by thresholding technique.
基于小波的MR脑肿瘤分类与分割
及时、准确地检测脑磁共振图像在医学分析中是至关重要的。文献中已有多种方法对肿瘤的分型进行了解释。本文阐述了将脑磁共振图像划分为正常或异常(受肿瘤影响)、图像中存在的异常片段的方法。本文首先提出dwt -离散小波变换,从给定的输入图像中提取图像特征。为了降低特征图像的维数,采用了主成分分析(PCA)。将提取的约简特征图像交给核支持向量机进行处理。该数据集有90张脑部磁共振图像(包括正常和异常),包括7种常见疾病。这些图像用于KSVM处理。该方法采用高斯径向基核(GRB)进行分类,与线性核(LIN)相比,准确率高达98%。从分析来看,与现有方法相比,GRB核方法是有效的。如果发现异常MR图像中存在肿瘤,则采用阈值分割技术对相应部分进行分离和分割。
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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