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Fast segmentation of bone in CT images using 3D adaptive thresholding.

机译:使用3D自适应阈值技术在CT图像中快速分割骨骼。

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摘要

Fast bone segmentation is often important in computer-aided medical systems. Thresholding-based techniques have been widely used to identify the object of interest (bone) against dark backgrounds. However, the darker areas that are often present in bone tissue may adversely affect the results obtained using existing thresholding-based segmentation methods. We propose an automatic, fast, robust and accurate method for the segmentation of bone using 3D adaptive thresholding. An initial segmentation is first performed to partition the image into bone and non-bone classes, followed by an iterative process of 3D correlation to update voxel classification. This iterative process significantly improves the thresholding performance. A post-processing step of 3D region growing is used to extract the required bone region. The proposed algorithm can achieve sub-voxel accuracy very rapidly. In our experiments, the segmentation of a CT image set required on average less than 10s per slice. This execution time can be further reduced by optimizing the iterative convergence process.
机译:快速骨分割在计算机辅助医疗系统中通常很重要。基于阈值的技术已被广泛用于识别深色背景下的目标物体(骨骼)。但是,骨骼组织中通常存在的较暗区域可能会对使用现有基于阈值的分割方法获得的结果产生不利影响。我们提出了一种使用3D自适应阈值技术进行骨骼分割的自动,快速,鲁棒和准确的方法。首先执行初始分割,以将图像划分为骨骼和非骨骼类别,然后进行3D相关性的迭代过程以更新体素分类。该迭代过程显着提高了阈值性能。 3D区域生长的后处理步骤用于提取所需的骨骼区域。所提出的算法可以非常快地实现子像素精度。在我们的实验中,CT图像集的分割平均每片所需时间少于10s。通过优化迭代收敛过程,可以进一步减少执行时间。

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