An Efficient Framework for the Segmentation of Glioma Brain Tumor Using Image Fusion and Co-Active Adaptive Neuro Fuzzy Inference System Classification Method

C. Moorthy, K. A. Britto
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Abstract

The image segmentation of any irregular pixels in Glioma brain image can be considered as difficult. There is a smaller difference between the pixel intensity of both tumor and non-tumor images. The proposed method stated that Glioma brain tumor is detected in brain MRI image by utilizing image fusion based Co-Active Adaptive Neuro Fuzzy Inference System (CANFIS) categorization technique. The low resolution brain image pixels are improved by contrast through image fusion method. This paper uses two different wavelet transforms such as, Discrete and Stationary for fusing two brain images for enhancing the internal regions. The pixels in contrast enhanced image is transformed into multi scale, multi frequency and orientation format through Gabor transform approach. The linear features can be obtained from this Gabor transformed brain image and it is being used to distinguish the non-tumor Glioma brain image from the tumor affected brain image through CANFIS method in this paper. The feature extraction and its impacts are being assigned on the proposed Glioma detection method is also examined in terms of detection rate. Then, morphological operations are involved on the resultant of classified Glioma brain image used to address and segment the tumor portions. The proposed system performance is analyzed with respect to various segmentation approaches. The proposed work simulation results can be compared with different state-of-the art techniques with respect to various parameter metrics and detection rate.
基于图像融合和协同自适应神经模糊推理系统分类的脑胶质瘤分割框架
脑胶质瘤图像中任意不规则像素点的分割都是困难的。肿瘤和非肿瘤图像的像素强度差异较小。该方法利用基于图像融合的协同自适应神经模糊推理系统(CANFIS)分类技术在脑MRI图像中检测胶质瘤。采用图像融合的方法对低分辨率的脑图像像素进行了对比改善。本文采用离散和平稳两种不同的小波变换对两幅脑图像进行融合,增强内部区域。利用Gabor变换方法将增强图像中的像素转换成多尺度、多频率和多方向的图像格式。本文通过CANFIS方法将Gabor变换后的脑图像线性特征用于区分非肿瘤胶质瘤脑图像和肿瘤影响脑图像。特征提取及其对所提出的胶质瘤检测方法的影响也在检测率方面进行了研究。然后,形态学操作涉及到分类脑胶质瘤图像的结果,用于定位和分割肿瘤部分。针对不同的分割方法,分析了系统的性能。所提出的工作模拟结果可以与不同的最先进的技术在不同的参数度量和检测率方面进行比较。
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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