形态学和分水岭联合分割冠状动脉血管造影

K. Sun, Shaofeng Jiang, Yu Wang
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引用次数: 9

摘要

提出了一种基于模糊数学形态学的冠状动脉树提取方法。在传统形态学顶帽算子增强图像后,用一组不同方向的线性结构元素的模糊形态学开口对血管图像进行滤波。同时,对增强后的图像进行了具有相同结构元素集的模糊开对偶滤波。然后,在每个位置的线性邻域内,考虑形态学滤波器检测到的局部方向一致性,将两个过滤后的血管图像合并成一个新的图像。结果图像的阈值产生与背景结构分离的二值化血管结构。最后将提取的血管结构作为血管形状和位置的先验,作为形态分水岭的标记,用于检测准确的血管边界。实验证明了该方法在临床x线血管造影中提取血管树的效果。我的介绍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of Coronary Artery on Angiogram by Combined Morphological Operations and Watershed
In this paper, a scheme using fuzzy mathematical morphology operations is proposed for extracting coronary ar- teries tree on angiogram. After the enhancement of image with the traditional morphological top-hat operator, the vessel image is filtered with the fuzzy morphological opening with a set of linear structuring elements at different orientation. At the same time, the enhanced image is also filtered with the dual of fuzzy opening with the same structuring elements set. The two filtered vessel image is then combined into a new image considering the local orientation consistency, detected by the morphological filter, within a linear neighborhood of each location. Threshold of the result image produces the binary vessel structure which is separate from background structure. The extracted vessel structure is lastly treated as prior of shape and location of vessel and used as marker in morphological watershed for detecting the accurate vessel boundaries. Experimentation shows the performance of proposed method on extraction vascular tree on clinical angiogram under x-ray. I. INTRODUCTION
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