Modified Watershed Transform for Automated Brain Segmentation from Magnetic Resonance Images

Siamak Roshanzadeh, Masoud Afrakhteh
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引用次数: 1

Abstract

The segmentation of human brain from Magnetic Resonance Image (MRI) is one of the most important parts of clinical diagnostic. Brains' anatomical structures can be visualized and measured through image segmentation. Especially, while clinical analysis of magnetic resonance images, accurate segmentation is a crucial task for precise subsequent analysis. Watershed transform is a widely used segmentation method in medical image analysis filed. Regarding MRI images, they always contain noise caused by different operating equipment and environmental situation. However, the performance of the watershed transform depends on converges of numerous local minima on the image. Wrong regional minima on the image cause a high rate of over-segmentation of the watershed transform method. To address this problem, in this paper we propose a modified watershed transform method to prevent over-segmentation using k-means clustering method. Our modified watershed transform utilizes the k-means clustering method for region classification to remove wrong regional minima on image and provides a guideline for watershed transform to prevent the over-segmentation problem. Experimental results on brain MRI images evaluations (Dice coefficient: 95.32%) demonstrate that the proposed method can substantially prevent the over-segmentation problem of conventional watershed transform method.
基于改进分水岭变换的脑磁共振图像自动分割
磁共振图像的分割是临床诊断的重要组成部分之一。大脑的解剖结构可以通过图像分割可视化和测量。特别是在临床分析磁共振图像时,准确的分割是后续精确分析的关键任务。分水岭变换是医学图像分析领域中应用广泛的分割方法。在MRI图像中,由于操作设备和环境的不同,往往会产生噪声。然而,分水岭变换的性能依赖于图像上众多局部极小值的收敛。分水岭变换方法的图像上错误的区域最小值导致了过高的过分割率。为了解决这一问题,本文提出了一种改进的分水岭变换方法,以防止使用k-means聚类方法进行过度分割。改进的分水岭变换利用k均值聚类方法进行区域分类,去除图像上错误的区域最小值,为分水岭变换防止过度分割问题提供指导。脑MRI图像评估实验结果(Dice系数为95.32%)表明,该方法可以有效防止传统分水岭变换方法的过分割问题。
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