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Image segmentation by three-level thresholding based on maximum fuzzy entropy and genetic algorithm

机译:基于最大模糊熵和遗传算法的三级阈值图像分割

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摘要

In the paper, a three-level thresholding method for image segmentation is presented, based on probability partition, fuzzy partition and entropy theory. A new fuzzy entropy has been defined through probability analysis. The image is divided into three parts, namely, dark, gray and white part, whose member functions of the fuzzy region are Z-function and Π-function and S-function, respectively, while the width and attribute of the fuzzy region can be determined by maximizing fuzzy entropy. The procedure for finding the optimal combination of all the fuzzy parameters is implemented by a genetic algorithm with appropriate coding method so as to avoid useless chromosomes. The experiment results show that the proposed method gives good performance.
机译:提出了一种基于概率划分,模糊划分和熵理论的三级阈值分割方法。通过概率分析定义了一个新的模糊熵。图像分为暗,灰,白三部分,模糊区域的成员函数分别为Z函数和Π函数以及S函数,而模糊区域的宽度和属性可以为通过最大化模糊熵来确定。寻找遗传算法的所有模糊参数的最佳组合的过程是通过遗传算法和适当的编码方法来实现的,从而避免了无用的染色体。实验结果表明,该方法具有良好的性能。

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