Segmentation of magnetic resonance images of brain using thresholding techniques

Jyotsna Dogra, M. Sood, Shruti Jain, Navdeep Parashar
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引用次数: 9

Abstract

In the recent years, image segmentation has become one of the important technique in several generalpurpose fields where it has been used to extract region of interest from the background. Image segmentation is a classic subject in the field of image processing which has a special focus on image processing techniques. Since, in literature there is no general solution to the image segmentation problem, various techniques have been employed to effectively solve these problems combined with the domain knowledge. A lot of brainstorming has been done to come up with an optimal technique to make images smooth and easy to evaluate. Among various image segmentation techniques, thresholding is one of the simplest techniques that has been used for image segmentation where the region of interest has been extracted from the background by comparing the pixel values with the threshold value. To obtain the threshold value histogram of the image has been calculated. The results shows that any abnormality can be localized easily in horizontal divided MRI brain image rather than in vertical divided MRI image.
脑磁共振图像的阈值分割
近年来,图像分割已成为一些通用领域的重要技术之一,它被用于从背景中提取感兴趣的区域。图像分割是图像处理领域的一门经典学科,是一门以图像处理技术为核心的学科。由于文献中没有针对图像分割问题的通用解决方案,因此结合领域知识,采用了各种技术来有效地解决这些问题。我们进行了大量的头脑风暴,以提出一种使图像平滑和易于评估的最佳技术。在各种图像分割技术中,阈值分割是最简单的用于图像分割的技术之一,它通过比较像素值和阈值从背景中提取感兴趣的区域。得到了直方图的阈值,对图像进行了计算。结果表明,水平分割的MRI图像比垂直分割的MRI图像更容易定位任何异常。
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