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Segmentation of Calcification and Brain Hemorrhage with Midline Detection

机译:中线检测对钙化和脑出血的分割

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摘要

A considerable amount of deformities are prone to be neglected by the radiotherapists besides acquisition of excessive and false positive rates. In this article, a process has been developed representing the selective parameters with Fuzzy C-Means and ANFIS (Adaptive Neuro-fuzzy inference). As it is a grave concern to differentiate the hemorrhage and calcification on the basis of selective factors. The desirable outcome and useful information are most likely to be delivered by the fuzzy clustering segmentation methods. The abnormal tissues in the brain are accurately identified by our proposed method. ANFIS can be referred to as the extension of the ANN family and it displays excellent learning skills and estimating competences, so it is believed to be a highly productive tool through which ambiguities in any system can be efficiently managed. The medical discipline is realizing the benefits of this system, such as the identification of hemorrhage and calcification. Our method is beneficial to image fusion techniques whose applications rely on the source information of local images. Results show that our method is superior then the other traditional methods in terms of quantitative image segmentation performance parameters.
机译:除获得过多和假阳性率外,放射治疗师还容易忽略很多畸形。在本文中,已经开发了一种过程,该过程用模糊C均值和ANFIS(自适应神经模糊推理)表示选择性参数。由于在选择因素的基础上区分出血和钙化是一个令人严重关注的问题。理想的结果和有用的信息最有可能通过模糊聚类分割方法来传递。我们提出的方法可以准确地识别出大脑中的异常组织。 ANFIS可以称为ANN家族的扩展,它显示出出色的学习技能和估算能力,因此,它被认为是一种高效的工具,可以通过它有效地管理任何系统中的歧义。医学界正在意识到该系统的好处,例如出血和钙化的识别。我们的方法有益于图像融合技术,其应用依赖于本地图像的源信息。结果表明,在定量图像分割性能参数方面,我们的方法优于其他传统方法。

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