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Region information-based ROI extraction by multi-initial fast marching algorithm

机译:多区域快速进阶算法的基于区域信息的ROI提取

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摘要

Region of interest (ROI) plays an important role in medical image analysis. In this paper, a new approach to ROI extraction based on the curve evolution is proposed. Different from the existent method, the proposed approach is efficient both in segmentation results and computational cost. The deforming curve is modeled as a monotonically marching front under a positive speed field, where a region speed function is derived by minimizing the new defined ROI energy, and integrated with the edge-based speed function. The curve evolution model integrating the ROI information has a large propagation range and could even drive the front in low-contrast and narrow thin areas. Moreover, a multi-initial fast marching algorithm, which permits the user to plant several seed curves as the initial front and evolves them simultaneously, is developed to fast implement the numerical solution. Selective planting seed curves could help the local growth and thus may further improve the segmentation results and reduce the computational cost. Experiments by our approach are presented and compared with that of the other methods, which show that the proposed approach could fast extract low-contrast and narrow thin ROI precisely.
机译:感兴趣区域(ROI)在医学图像分析中起着重要作用。提出了一种基于曲线演化的ROI提取新方法。与现有方法不同,该方法在分割结果和计算成本上都是有效的。变形曲线被建模为正速度场下的单调行进前沿,其中通过最小化新定义的ROI能量来推导区域速度函数,并与基于边缘的速度函数集成在一起。集成了ROI信息的曲线演化模型具有较大的传播范围,甚至可以在低对比度和狭窄的薄区域中驱动前端。此外,开发了一种多初始快速行进算法,该算法允许用户将多个种子曲线作为初始前沿进行种植并同时进行演化,以快速实现数值解。选择性种植种子曲线可以帮助局部生长,因此可以进一步改善分割结果并降低计算成本。提出了我们的方法进行的实验,并将其与其他方法进行了比较,结果表明,该方法可以快速准确地提取低对比度且窄的薄ROI。

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