医学图像处理中的神经模糊系统

S. Hussain, S. Hussain, M. Raju, M. N. Giriprasad, D. Satyanarayana, C. Venkatesh
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引用次数: 3

摘要

本研究实现了MRI数据的神经模糊分割处理,以检测各种组织,如白质、灰质、脑脊液和肿瘤。利用层次自组织映射和模糊c均值算法的优势对图像进行逐层分类。最低级别的权重向量由抽象级别实现。我们还通过这种神经模糊方法获得了更高的肿瘤像素值。研究了该方法的计算速度。从临床诊断的角度来看,神经模糊的多层分割结果具有有趣的结果。神经模糊技术表明,利用HSOM-FCM进行MRI脑肿瘤分割也比以往的方法更准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuro-fuzzy system for medical image processing
Implementation of a neuro-fuzzy segmentation process of the MRI data is presented in this study to detect various tissues like white matter, gray matter, csf and tumor. The advantage of hierarchical self organizing map and fuzzy c means algorithms are used to classify the image layer by layer. The lowest level weight vector is achieved by the abstraction level. We have also achieved a higher value of tumor pixels by this neuro-fuzzy approach. The computation speed of the proposed method is also studied. The multilayer segmentation results of the neuro fuzzy are shown to have interesting consequences from the viewpoint of clinical diagnosis. Neuro fuzzy technique shows that MRI brain tumor segmentation using HSOM-FCM also perform more accurate one than the techniques proposed before.
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