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An improved quantum-behaved particle swarm optimization and its application to medical image registration

机译:改进的量子行为粒子群算法及其在医学图像配准中的应用

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This paper investigates the quantum-behaved particle swarm optimization (QPSO) algorithm from the perspective of estimation of distribution algorithm (EDA) which reveals the reason of QPSO's superiority. A revised QPSO (RQPSO) technique with a novel iterative equation is also proposed. The modified technique is deduced from the distribution function of the sum of two random variables with exponential and normal distribution, respectively. We present a diversity-controlled RQPSO (DRQPSO) algorithm, which helps prevent the evolutionary algorithms' tendency to be easily trapped into local optima as a result of rapid decline in diversity. Both the RQPSO and DRQPSO are tested on three benchmark functions, as well as in medical image registration for performance comparison with the particle swarm optimization and QPSO.
机译:本文从分布算法(EDA)估计的角度研究了量子行为粒子群优化(QPSO)算法,揭示了QPSO优越性的原因。还提出了一种具有新型迭代方程的改进的QPSO(RQPSO)技术。从分别具有指数分布和正态分布的两个随机变量之和的分布函数推导出改进的技术。我们提出了一种多样性控制的RQPSO(DRQPSO)算法,该算法有助于防止由于多样性快速下降而导致进化算法容易陷入局部最优状态的趋势。 RQPSO和DRQPSO都在三个基准功能上进行了测试,并在医学图像配准中进行了测试,以与粒子群优化和QPSO进行性能比较。

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