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An Automatic and Robust Algorithm for Segmentation of Three-dimensional Medical Images

机译:一种自动鲁棒的三维医学图像分割算法

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Segmentation is a crucial precursor to most medical image analysis applications. This paper presents a new three-dimensional adaptive region growing algorithm for the automatic segmentation of three-dimensional images. The principle of our algorithm is to obtain a satisfactory segment result by self-tuning the homogeneity constraint step by step, which effectively resolves the dilemma of threshold auto-selection. Novel homogeneity and leakage detection criteria are designed to improve accuracy and robustness. Cavities auto-filling algorithm is also proposed to eliminate the interior cavities. Our algorithm was tested by segmenting lungs from 3D throat CT images and compared with manual segmentation and traditional 3D region growing. Results demonstrate that our algorithm greatly outperforms traditional 3D region growing method and its segment result is close to that of manual segmentation.
机译:分割是大多数医学图像分析应用程序的重要先决条件。本文提出了一种新的三维自适应区域增长算法,用于三维图像的自动分割。该算法的原理是通过逐步调整均匀性约束条件来获得令人满意的分割结果,从而有效地解决了阈值自动选择的难题。新的同质性和泄漏检测标准旨在提高准确性和鲁棒性。还提出了腔体自动填充算法以消除内部腔体。我们的算法通过对3D喉部CT图像的肺部进行分割进行测试,并与手动分割和传统3D区域生长进行了比较。结果表明,我们的算法大大优于传统的3D区域增长方法,其分割结果接近于手动分割。

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