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Multiple Model Estimation for the Detection of Curvilinear Segments in Medical X-ray Images Using Sparse-plus-dense-RANSAC

机译:基于稀疏加密集RANSAC的医学X射线图像中曲线段检测的多模型估计

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In this paper, we build on the RANSAC method to detect multiple instances of objects in an image, where the objects are modeled as curvilinear segments with distinct endpoints. Our approach differs from previously presented work in that it incorporates soft constraints, based on a dense image representation, that guide the estimation process in every step. This enables (1) better correspondence with image content, (2) explicit endpoint detection and (3) a reduction in the number of iterations required for accurate estimation. In the case of curvilinear objects examined in this paper, these constraints are formulated as binary image labels, where the estimation proved to be robust to mislabeling, e.g. in case of intersections. Results for both synthetic and real data from medical X-ray images show the improvement from incorporating soft image-based constraints.
机译:在本文中,我们基于RANSAC方法来检测图像中对象的多个实例,其中将对象建模为具有不同端点的曲线段。我们的方法与先前介绍的工作不同,因为它结合了基于密集图像表示的软约束,可指导每个步骤的估计过程。这使得(1)与图像内容更好地对应,(2)显式端点检测,以及(3)减少了精确估计所需的迭代次数。在本文研究的曲线对象的情况下,这些约束条件被公式化为二进制图像标签,其中估计被证明对错误标记具有鲁棒性,例如在交叉路口的情况下。来自医学X射线图像的合成数据和真实数据的结果表明,由于结合了基于软图像的约束条件而得到了改善。

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