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Combining region-based and imprecise boundary-based cues for interactive medical image segmentation

机译:结合基于区域和不精确边界的提示进行交互式医学图像分割

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In this paper, we present an approach combining both region selection and user point selection for user-assisted segmentation as either an enclosed object or an open curve, investigate the method of image segmentation in specific medical applications (user-assisted segmentation of the media-adventitia border in intravascular ultrasound images, and lumen border in optical coherence tomography images), and then demonstrate the method with generic images to show how it could be utilized in other types of medical image and is not limited to the applications described. The proposed method combines point-based soft constraint on object boundary and stroke-based regional constraint. The user points act as attraction points and are treated as soft constraints rather than hard constraints that the segmented boundary has to pass through. The user can also use strokes to specify region of interest. The probabilities of region of interest for each pixel are then calculated, and their discontinuity is used to indicate object boundary. The combinations of different types of user constraints and image features allow flexible and robust segmentation, which is formulated as an energy minimization problem on a multilayered graph and is solved using a shortest path search algorithm. We show that this combinatorial approach allows efficient and effective interactive segmentation, which can be used with both open and closed curves to segment a variety of images in different ways. The proposed method is demonstrated in the two medical applications, that is, intravascular ultrasound and optical coherence tomography images, where image artefacts such as acoustic shadow and calcification are commonplace and thus user guidance is desirable. We carried out both qualitative and quantitative analysis of the results for the medical data; comparing the proposed method against a number of interactive segmentation techniques.
机译:在本文中,我们提出了一种结合区域选择和用户点选择的方法将用户辅助分割为封闭对象或开放曲线,研究特定医学应用中的图像分割方法(媒体的用户辅助分割-血管内超声图像中的血管外膜边界,光学相干断层扫描图像中的管腔边界),然后用通用图像演示该方法,以显示该方法可用于其他类型的医学图像中,并且不限于所描述的应用。该方法结合了基于点的对象边界软约束和基于笔划的区域约束。用户点充当吸引点,并被视为软约束,而不是分段边界必须通过的硬约束。用户还可以使用笔划指定感兴趣的区域。然后计算每个像素感兴趣区域的概率,并将它们的不连续性用于指示对象边界。不同类型的用户约束和图像特征的组合可实现灵活,鲁棒的分割,将其表示为多层图上的能量最小化问题,并使用最短路径搜索算法解决。我们证明了这种组合方法可以实现有效而有效的交互式分割,该分割可以与开放曲线和封闭曲线一起使用,以不同方式分割各种图像。所提出的方法在两种医学应用中得到了证实,即血管内超声和光学相干断层扫描图像,其中图像伪像(如声影和钙化)很常见,因此需要用户指导。我们对医学数据的结果进行了定性和定量分析。将提出的方法与多种交互式细分技术进行了比较。

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