Pan Meisen, Tang Jingtian, Xiong Qi
College of Computer Science and Technology, Hunan University of Arts and Science, Changde, Hunan Province, 415000, PR China.
Comput Methods Biomech Biomed Engin. 2012;15(7):721-34. doi: 10.1080/10255842.2011.557372. Epub 2011 May 24.
Mutual information (MI)-based registration, which uses MI as the similarity measure, is a representative method in medical image registration. It has an excellent robustness and accuracy, but with the disadvantages of a large amount of calculation and a long processing time. In this paper, by computing the medical image moments, the centroid is acquired. By applying fuzzy c-means clustering, the coordinates of the medical image are divided into two clusters to fit a straight line, and the rotation angles of the reference and floating images are computed, respectively. Thereby, the initial values for registering the images are determined. When searching the optimal geometric transformation parameters, we put forward the two new concepts of fuzzy distance and fuzzy signal-to-noise ratio (FSNR), and we select FSNR as the similarity measure between the reference and floating images. In the experiments, the Simplex method is chosen as multi-parameter optimisation. The experimental results show that this proposed method has a simple implementation, a low computational cost, a fast registration and good registration accuracy. Moreover, it can effectively avoid trapping into the local optima. It is adapted to both mono-modality and multi-modality image registrations.
基于互信息(MI)的配准方法以MI作为相似性度量,是医学图像配准中的一种代表性方法。它具有出色的鲁棒性和准确性,但存在计算量大、处理时间长的缺点。本文通过计算医学图像矩获取质心。应用模糊c均值聚类将医学图像坐标分为两类以拟合一条直线,并分别计算参考图像和浮动图像的旋转角度,从而确定图像配准的初始值。在搜索最优几何变换参数时,我们提出了模糊距离和模糊信噪比(FSNR)这两个新概念,并选择FSNR作为参考图像和浮动图像之间的相似性度量。在实验中,选择单纯形法进行多参数优化。实验结果表明,该方法实现简单、计算成本低、配准速度快且配准精度高。此外,它能有效避免陷入局部最优。它适用于单模态和多模态图像配准。