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Interpretation of MR images using self-organizing maps and knowledge-based expert systems

机译:使用自组织图和基于知识的专家系统对MR图像进行解释

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摘要

A new image segmentation system is presented to automatically segment and label brain magnetic resonance (MR) images to show normal and abnormal brain tissues using self-organizing maps (SOM) and knowledge-based expert systems. Elements of a feature vector are formed by image intensities, first-order features, texture features extracted from gray-level co-occurrence matrix and multiscale features. This feature vector is used as an input to the SOM. SOM is used to over segment images and a knowledge-based expert system is used to join and label the segments. Spatial distributions of segments extracted from the SOM are also considered as well as gray level properties. Segments are labeled as background, skull, white matter, gray matter, cerebrospinal fluid (CSF) and suspicious regions.
机译:提出了一种新的图像分割系统,该系统使用自组织图(SOM)和基于知识的专家系统自动分割和标记大脑磁共振(MR)图像,以显示正常和异常的大脑组织。特征向量的元素由图像强度,一阶特征,从灰度共现矩阵提取的纹理特征和多尺度特征组成。该特征向量用作SOM的输入。 SOM用于覆盖片段图像,而基于知识的专家系统用于连接和标记片段。从SOM提取的片段的空间分布以及灰度特性也都应考虑在内。片段标记为背景,头骨,白质,灰质,脑脊液(CSF)和可疑区域。

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