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MR Image Segmentation: An Algorithm Based on Competitive Hopfield Neural Network and Curve Propagation

机译:MR图像分割:一种基于竞争激光野猫神经网络和曲线传播的算法

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Although Magnetic Resonance Imaging (MRI) can provide high spatial resolution images, the area gray level inhomogenization , weak boundary and artifact often can be found in MR images. So, the MR images segmentation using the gradient-based methods are poor in quality and in efficiency. An algorithm, based on the Competitive Hopfield Neural Network (CHNN) and the curve propagation, is proposed for MR images segmentation in this paper. The algorithm is composed of two phases. In first phase, a CHNN is used to classify the image objects, and to make gray level homogenization and to recognize weak boundaries in objects. In second phase, based the classified results, the level set velocity function is created and the object boundaries are extracted with the curve propagation algorithm of the narrowband-based level set. The test results are promising and encouraging.
机译:尽管磁共振成像(MRI)可以提供高空间分辨率图像,但是在MR图像中通常可以找到区域灰度级别,区域灰度级别,弱边界和伪影。因此,使用基于梯度的方法的MR图像分割质量差,效率较差。提出了一种基于竞争Hopfield神经网络(CHNN)和曲线传播的算法,用于本文的MR图像分段。该算法由两个阶段组成。在第一阶段,CHNN用于对图像对象进行分类,并制作灰度级均匀化并识别对象中的弱边界。在第二阶段,基于分类结果,创建了级别设置速度函数,并且利用基于窄带的级别集的曲线传播算法提取对象边界。测试结果是有前途和令人鼓舞的。

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