一种基于互信息的改进医学图像配准算法

Tian Lan, Hongbo Jiang, Yi Ding, Zhiguang Qin
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引用次数: 1

摘要

医学图像配准广泛应用于临床诊断、治疗、质量保证等方面,是实现图像融合与重建的前提。提出了一种改进的基于互信息的医学图像配准算法。首先,采用b样条梯度算子对参考图像和浮动图像进行边缘检测,分别得到二值化图像;然后,计算二值化图像的矩,得到质心坐标。根据边缘检测算子,得到参考图像和浮动图像的旋转角度。本文采用改进互信息(IMI)作为参考图像和浮动图像之间相似度的度量。实验结果表明,该算法具有计算复杂度低、精度高等优点,克服了传统互信息算法容易陷入局部最优的缺点。
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An Improved Medical Image Registration Algorithm Based on Mutual Information
Medical image registration is widely used in clinical diagnosis, treatment, quality assurance and it's also the prerequisite to realize the fusion and reconstruction. This paper presents an improved medical image registration algorithm based on mutual information. First of all, B-spline gradient operator is adopted to detect edges of the reference image and the floating image and then get binarization image respectively. Next, in order to obtain the centroid coordinates, the moments of the binarization image is calculated. According to the edge detection operator, the rotation angle of thereference image and floating image are obtained. In this paper, improved mutual information (IMI) is used as a measure ofsimilarity between the reference and floating images. Theexperimental results show that the proposed algorithm has theadvantages of low computational complexity and high accuracy, and overcomes the shortcomings of the traditional mutual information easily falling into local optimum.
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