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A machine learning approach for brain image enhancement and segmentation

机译:一种用于脑图像增强和分割的机器学习方法

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摘要

In brain MRI analysis, image segmentation is commonly used for measuring and visualizing the brain's anatomical structures, for surgical planning, etc. However, due to presence of noise and uncertainty between different tissues in the brain image, the segmentation of brain is a challenging task. This problem is rectified in this article using two stages. In the first stage an enhancement technique called contrast limited fuzzy adaptive histogram equalization (CLFAHE) which is a combination of CLAHE and fuzzy enhancement is used to improve the contrast of MRI Brain images. Contrast of the image is controlled using contrast intensification operator (Clip limit). The second stage deals with the segmentation of enhanced image. The enhanced brain images are segmented using new level-set method which has the property of both local and global segmentation. Signed pressure force (SPF) function is also used here which stops the contours at weak and blurred edged efficiently.
机译:在大脑MRI分析中,图像分割通常用于测量和可视化大脑的解剖结构,进行手术计划等。但是,由于大脑图像中不同组织之间存在噪声和不确定性,因此大脑分割是一项艰巨的任务。本文分两个阶段解决了此问题。在第一阶段,一种称为对比限制模糊自适应直方图均衡化(CLFAHE)的增强技术将CLAHE和模糊增强结合在一起,用于改善MRI脑部图像的对比度。使用对比度增强算子(限幅)控制图像的对比度。第二阶段处理增强图像的分割。使用新的水平集方法对增强的脑图像进行分割,该方法具有局部和全局分割的特性。在此还使用了有符号压力(SPF)功能,可有效地将轮廓停在弱且模糊的边缘。

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