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Dispersive Flies Optimisation and Medical Imaging

机译:分散蝇的优化和医学成像

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One of the main sources of inspiration for techniques applicable to complex search space and optimisation problems is nature. This paper introduces a new metaheuristic-Dispersive Flies Optimisation (DFO)-whose inspiration is beckoned from the swarming behaviour of flies over food sources in nature. The simplicity of the algorithm facilitates the analysis of its behaviour. A series of experimental trials confirms the promising performance of the optimiser over a set of benchmarks, as well as its competitiveness when compared against three other well-known population based algorithms. The convergence-independent diversity of DFO algorithm makes it a potentially suitable candidate for dynamically changing environment. In addition to diversity, the performance of the newly introduced algorithm is investigated using the three performance measures of accuracy, efficiency and reliability and its outperformance is demonstrated in the paper. Then the proposed swarm intelligence algorithm is used as a tool to identify microcalcifications on the mammographs. This algorithm is adapted for this particular purpose and its performance is investigated by running the agents of the swarm intelligence algorithm on sample mammographs whose status have been determined by the experts. Two modes of the algorithms are introduced in the paper, each providing the clinicians with a different set of outputs, highlighting the areas of interest where more attention should be given by those in charge of the care of the patients.
机译:适用于复杂搜索空间和优化问题的技术的主要灵感的主要来源之一是性质。本文介绍了一种新的Metaheuristic-Disperive苍蝇优化(DFO) - 从FIL蜂拥而至的食物来源的蜂拥而至的感受。算法的简单性有助于分析其行为。一系列实验试验证实了优化器在一系列基准中的优化仪的表现,以及与其他三个基于人群的算法进行比较时的竞争力。 DFO算法的融合 - 独立多样性使其成为动态变化环境的潜在合适的候选者。除了多样性之外,使用三种精度,效率和可靠性的三种性能测量来研究新引入算法的性能,并在纸上证明了其优于的优惠。然后,所提出的群体智能算法用作识别乳房X型焦觉上的微钙化的工具。该算法适用于这种特定目的,并通过在样本乳房X线仪上运行其状态由专家确定的样本乳房识别算法来研究其性能。本文介绍了两种算法,每种算法,每个模式都为临床医生提供了不同的产出,突出了感兴趣的区域,患者负责的人更加关注。

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