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Fast Object Segmentation by Growing Minimal Paths from a Single Point on 2D or 3D Images

机译:通过在2D或3D图像上从单个点开始增加最小路径来实现快速对象分割

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摘要

In this paper, we present a new method for segmenting closed contours and surfaces. Our work builds on a variant of the minimal path approach. First, an initial point on the desired contour is chosen by the user. Next, new keypoints are detected automatically using a front propagation approach. We assume that the desired object has a closed boundary. This a-priori knowledge on the topology is used to devise a relevant criterion for stopping the keypoint detection and front propagation. The final domain visited by the front will yield a band surrounding the object of interest. Linking pairs of neighboring keypoints with minimal paths allows us to extract a closed contour from a 2D image. This approach can also be used for finding an open curve giving extra information as stopping criteria. Detection of a variety of objects on real images is demonstrated. Using a similar idea, we can extract networks of minimal paths from a 3D image called Geodesic Meshing. The proposed method is applied to 3D data with promising results.
机译:在本文中,我们提出了一种分割闭合轮廓和曲面的新方法。我们的工作基于最小路径方法的变体。首先,用户选择所需轮廓上的起始点。接下来,使用前端传播方法自动检测新的关键点。我们假设所需对象具有封闭边界。这种关于拓扑的先验知识用于设计用于停止关键点检测和前端传播的相关标准。前端访问的最终域将产生围绕感兴趣对象的波段。用最小的路径链接成对的相邻关键点,使我们能够从2D图像中提取闭合轮廓。这种方法也可以用于找到一条开放曲线,以提供额外的信息作为停止标准。演示了对真实图像上各种对象的检测。使用类似的想法,我们可以从称为Geodesic Meshing的3D图像中提取最小路径的网络。所提出的方法应用于3D数据,具有良好的效果。

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