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Fuzzy Partition and Correlation for Image Segmentation with Differential Evolution

机译:具有差分演化的图像分割的模糊划分和相关性

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Thresholding-based techniques have been widely used in image segmentation. The selection of appropriate threshold is a very significant issue for image thresholding. In this paper, a new image histogram thresholding method based on fuzzy partition and maximum correlation criterion is presented. In the proposed approach, the regions, i.e. object and background, are considered ambiguous in nature, and hence the regions are transformed into fuzzy domain with membership functions. Then, the fuzzy correlations about regions are constructed and the optimal threshold is determined by searching an optimal parameter combination of the membership functions such that the correlation of the fuzzy partitions is maximized. Since the exhaustive search for all fuzzy parameter combinations is too costly, the differential evolution algorithm is introduced into fuzzy correlation image segmentation to solve this optimal problem adaptively. Experimental results on general images and infrared images demonstrate the effectiveness of the proposed method.
机译:基于阈值的技术已广泛用于图像分割中。适当阈值的选择对于图像阈值化是非常重要的问题。提出了一种基于模糊划分和最大相关准则的图像直方图阈值化方法。在提出的方法中,区域,即对象和背景,在本质上被认为是模棱两可的,因此这些区域被转换为具有隶属函数的模糊域。然后,构造关于区域的模糊相关性,并通过搜索隶属函数的最佳参数组合来确定最佳阈值,从而使模糊分区的相关性最大化。由于穷举搜索所有模糊参数组合的成本太高,因此将差分进化算法引入模糊相关图像分割中,以自适应地解决该最优问题。在普通图像和红外图像上的实验结果证明了该方法的有效性。

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