改进的基于区域的医学图像分割方法

R. Kashyap, Pratima Gautam
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引用次数: 23

摘要

医疗保健应用成为医疗保健行业的福音。为了正确诊断,需要对医学图像进行正确的分割。这保证了医疗保健图像受害的高质量分割。水平集方法(LSM)是一种有效的方法,但采用正确的分段进行快速处理仍然很困难。基于区域的模型不能很好地处理强度不规则图像。有了这张卡片,我们有了一个全新的趋势,提出了一个更好的基于区域的水平集方法,其中集成了由于测地线活动轮廓模型和Mumford-Shah模型而改变的带符号压力函数。从而消除了旧水平集模型的重新初始化过程,消除了计算量大的重新初始化。与传统模型相比,该模型对边缘较弱、强度不规则的图像具有较强的耐受性。我们方法的新颖之处在于帮助您在本地计算改进的有符号压力函数(SPF),它使用邻域平均值,使其能够检测同质位置内的边界。与其他主动设计模型相比,该方法具有流程快、自动化程度高、图像分割准确等优点。该方法经过了大量的分析测试,证明了其在医学图像分割中的重要性。
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Modified region based segmentation of medical images
Health care applications became boon for the healthcare industry. It needs correct segmentation connected with medical images regarding correct diagnosis. This assures good quality segmentation of healthcare images victimization. The Level set method (LSM) can be a capable technique however quick process employing correct segments is still difficult. The region based model does inadequately for intensity irregularity images. With this cardstock, we have a whole new tendency to propose a better region based level set method of which integrates the altered signed pressure function because of the geodesic active contour models plus the Mumford-Shah model. So as to eliminate the re-initialization procedure for ancient level set model and removes the computationally costly re-initialization. A compared employing ancient model, our model is more durable against images employing weak edge and intensity irregularity. The novelty within our method is to help you locally compute improved Signed pressure function (SPF), which uses neighborhood mean values which enables it to detect boundaries within the homogenous places. Compared with other active design models proposed method derives valuable advantages not stuck just using quick process, automation and correct medical image segments. This method offers undergone numerous analysis tests to prove its importance in medical image segmentation.
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