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Improvement of Liver Segmentation by Combining High Order Statistical Texture Features with Anatomical Structural Features

机译:通过将高阶统计纹理特征与解剖结构特征相结合来改善肝脏分割

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Automatic segmentation of liver in medical images is challenging on the aspects of accuracy, automation and robustness. A crucial stage of the liver segmentation is the selection of the image features for the segmentation. This paper presents an accurate liver segmentation algorithm. The approach starts with a texture analysis which results in an optimal set of texture features including high order statistical texture features and anatomical structural features. Then, it creates liver distribution image by classifying the original image pixelwisely using support vector machines. Lastly, it uses a group of morphological operations to locate the liver organ accurately in the image. The novelty of the approach is resided in the fact that the features are so selected that both local and global texture distributions are considered, which is important in liver organ segmentation where neighbouring tissues and organs have similar greyscale distributions. Experiment results of liver segmentation on CT images using the proposed method are presented with performance validation and discussion.
机译:在准确性,自动化和鲁棒性方面,医学图像中肝的自动分割具有挑战性。肝分割的关键阶段是选择用于分割的图像特征。本文提出了一种准确的肝分割算法。该方法首先进行纹理分析,从而得到一组最佳的纹理特征,包括高阶统计纹理特征和解剖结构特征。然后,它通过使用支持向量机按像素对原始图像进行分类来创建肝脏分布图像。最后,它使用一组形态学操作将肝脏器官准确定位在图像中。该方法的新颖性在于选择特征时要考虑局部和全局纹理分布,这在相邻器官和器官具有相似灰度分布的肝脏器官分割中很重要。提出了利用该方法在CT图像上进行肝脏分割的实验结果,并进行了性能验证和讨论。

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