首页> 外文会议>Image Processing pt.2; Progress in Biomedical Optics and Imaging; vol.6 no.24 >Maximization of Feature Potential Mutual Information in Multimodality Image Registration Using Particle Swarm Optimization
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Maximization of Feature Potential Mutual Information in Multimodality Image Registration Using Particle Swarm Optimization

机译:利用粒子群算法最大化多模态图像配准中的特征势互信息

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Standard Mutual Information function contains local maxima, which make against to convergence of registration transformation parameters for automated multimodality image registration problems. We proposed Feature Potential Mutual Information (FPMI) to increases the smoothness of the registration measure function and use Particle Swarm Optimization to search the optimal registration transformation parameter in this paper. At first, Edges of images are detected. Next, edge feature potential is defined by expanding edges to the neighborhood region using potential function. Each edge point influences the whole potential field, just like the particle of physics in the gravitation field space. FPMI is computed on the edge feature potential of two images. It substitutes the edge feature potential values for gray values in images. It can avoid great change of joint probability distribution and has less local maxima. The registration accuracy of FPMI is analyzed under different edge detection cases. It is shown that the registration accuracy of FPMI is more accurate and more robust than that of MI. Maximization of FPMI is done by PSO. PSO combines local search methods with global search methods, attempting to balance exploration and exploitation. Its complex behavior follows from a few simple rules and has less computational complexity. Multimodal medical images are used to compare the response of FPMI and MI to translation and rotation. Experiments show that FPMI is smoother and has less local fluctuations than that of MI. Registration results show that PSO do it better than Powell's method to search the optimal registration parameters.
机译:标准互信息功能包含局部最大值,这不利于自动多模态图像配准问题的配准转换参数的收敛。我们提出了特征势互信息(FPMI)来提高配准测量函数的平滑度,并使用粒子群优化算法搜索最佳配准转换参数。首先,检测图像的边缘。接下来,通过使用势函数将边缘扩展到邻域来定义边缘特征势。每个边缘点都会影响整个势场,就像重力场空间中的物理粒子一样。 FPMI是在两个图像的边缘特征电位上计算的。它将边缘特征电位值替换为图像中的灰度值。它可以避免联合概率分布的巨大变化,并且具有较小的局部最大值。分析了不同边缘检测情况下FPMI的配准精度。结果表明,FPMI的配准精度比MI的配准精度更高,更可靠。 FPMI的最大化由PSO完成。 PSO将本地搜索方法与全局搜索方法相结合,试图平衡勘探和开发。它的复杂行为遵循一些简单规则,并且计算复杂度较低。多峰医学图像用于比较FPMI和MI对平移和旋转的响应。实验表明,与MI相比,FPMI更为平滑且局部波动较小。配准结果表明,PSO优于Powell的方法来搜索最佳配准参数。

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