首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Three-dimensional lung medical image registration based on improved demons algorithm
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Three-dimensional lung medical image registration based on improved demons algorithm

机译:基于改进的恶魔算法的三维肺部医学图像配准

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摘要

To put forward an accurate and effective registration method based on improved Demons algorithm, and to register three-dimensional pulmonary medical images of the same individual whose lung has the deformation under different respiration state. The experimental data are the maximum and minimum respiratory phase of the three-dimensional pulmonary images within a cycle of respiratory movement. First, images for registration are registered globally and non-rigidly. Feature points are extracted and matched by scale invariant feature transform algorithm. Afterwards, the global registration is finished according to the transformation parameter computed based on matching results. Finally, images after global registration are registered non-rigidly utilizing improved Demons algorithm. Image registration of human lung is realized employing improved method. The mean-square error between images before registration is 25,835.3 and it is reduced to 11,790.9 after registration. After further deal with improved Demons algorithm, the mean-square error between images is reduced to 3726.31 and the descent rate of mean-square is up to 85.58%. The proposed method effectively registers three-dimensional pulmonary images, which provides a solid foundation for doctors to estimate pulmonary respiratory movement and analyze respiratory function. (C) 2015 Published by Elsevier GmbH.
机译:提出一种基于改进的恶魔算法的准确有效的配准方法,并配准同一个体在不同呼吸状态下肺部变形的三维肺部医学图像。实验数据是在呼吸运动周期内三维肺图像的最大和最小呼吸相位。首先,用于注册的图像被全局且非刚性地注册。利用尺度不变特征变换算法提取和匹配特征点。然后,根据基于匹配结果计算出的变换参数完成全局配准。最后,使用改良的恶魔算法非刚性地注册了全局注册后的图像。采用改进的方法实现了人肺图像的配准。配准前图像之间的均方误差为25,835.3,配准后降低至11,790.9。经过进一步改进的恶魔算法处理后,图像之间的均方误差减小到3723.61,均方下降率高达85.58%。该方法有效地记录了三维肺图像,为医生估计肺呼吸运动和分析呼吸功能提供了坚实的基础。 (C)2015由Elsevier GmbH发布。

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