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Parameter Optimization Based on Quantum Genetic Algorithm for Generalized Fuzzy Entropy Thresholding Segmentation Method

机译:基于量子遗传算法的广义模糊熵阈值分割方法参数优化

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Generalized fuzzy entropy thresholding method segments the image based on the principle that the membership degree of the threshold point is equal to m (0≪m≪1), which can obtain better segmentation result than that of traditional fuzzy entropy method, especially for images with bad illumination. The key step of this method is how to determine the parameter m effectively. In this paper, we use quantum genetic algorithm to solve it. Quantum genetic algorithm is used to automatically determine the optimal parameter m and the membership function parameters (a,b,c) respectively based on an image segmentation quality evaluation criterion and the maximum fuzzy entropy criterion, realizing the automatic selection of the threshold in generalized fuzzy entropy-based image segmentation method. Experiment results show that our method can obtain better segmentation results than that of traditional fuzzy entropy-based method.
机译:广义模糊熵阈值阈值方法基于阈值点的隶属度等于M(0.m«1)的原理分段,其可以获得比传统模糊熵方法更好的分段结果,尤其是用于图像不良照明。此方法的关键步骤是如何有效地确定参数M。在本文中,我们使用量子遗传算法来解决它。量子遗传算法用于分别基于图像分割质量评估标准和最大模糊熵标准自动确定最佳参数M和隶属函数参数(A,B,C),实现广义模糊中的阈值的自动选择基于熵的图像分割方法。实验结果表明,我们的方法可以获得比传统模糊熵的方法更好的分段结果。

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