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Medical Image Registration Algorithm with Generalized Mutual Information and PSO-Powell Hybrid Algorithm

机译:广义互信息与PSO-鲍威尔混合算法的医学图像配准算法

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The medical image registration algorithm uses the mutual information measure function that has many local extremes. Therefore, we propose our medical image registration algorithm that combines generalized mutual information with PSO-Powell hybrid algorithm and uses the objective measure function based on Renyi entropy. The Renyi entropy can remove the local extremes. We use the particle swarm optimization (PSO) algorithm to locate the measure function near the local extremes. Then we take the local extremes as initial point and use the Powell optimization algorithm to search for the global optimal solution. Section 2.2 of the paper presents the six-step procedure of our registration algorithm. We simulate medical image data with the registration algorithm; the simulation results, given in Table. 2 and 3, show preliminarily that the registration algorithm can eliminate the local extremes of objective measure function and accelerate the convergence rate, thus obtaining accurate and better registration results.
机译:医学图像配准算法使用具有许多局部极端的互信息度量功能。因此,我们提出了一种医学图像配准算法,该算法将广义互信息与PSO-Powell混合算法相结合,并使用基于Renyi熵的客观测量函数。 Renyi熵可以消除局部极值。我们使用粒子群优化(PSO)算法将度量函数定位在局部极值附近。然后我们将局部极值作为初始点,并使用Powell优化算法搜索全局最优解。本文的第2.2节介绍了我们的注册算法的六步过程。我们使用配准算法模拟医学图像数据;仿真结果见表。图2和3初步表明,该配准算法可以消除客观度量函数的局部极值并加快收敛速度​​,从而获得准确,更好的配准结果。

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