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首页> 外文期刊>Micron: The international research and review journal for microscopy >Accurate segmentation of leukocyte in blood cell images using Atanassov's intuitionistic fuzzy and interval Type II fuzzy set theory
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Accurate segmentation of leukocyte in blood cell images using Atanassov's intuitionistic fuzzy and interval Type II fuzzy set theory

机译:使用Atanassov直觉模糊和区间II型模糊集理论对血细胞图像中的白细胞进行精确分割

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In this paper automatic leukocyte segmentation in pathological blood cell images is proposed using intu-itionistic fuzzy and interval Type II fuzzy set theory. This is done to count different types of leukocytes for disease detection. Also, the segmentation should be accurate so that the shape of the leukocytes is preserved. So, intuitionistic fuzzy set and interval Type II fuzzy set that consider either more number of uncertainties or a different type of uncertainty as compared to fuzzy set theory are used in this work. As the images are considered fuzzy due to imprecise gray levels, advanced fuzzy set theories may be expected to give better result. A modified Cauchy distribution is used to find the membership function. In intuitionistic fuzzy method, non-membership values are obtained using Yager's intuitionistic fuzzy generator. Optimal threshold is obtained by minimizing intuitionistic fuzzy divergence. In interval type II fuzzy set, a new membership function is generated that takes into account the two levels in Type II fuzzy set using probabilistic T co norm. Optimal threshold is selected by minimizing a proposed Type II fuzzy divergence. Though fuzzy techniques were applied earlier but these methods failed to threshold multiple leukocytes in images. Experimental results show that both interval Type II fuzzy and intuition-istic fuzzy methods perform better than the existing non-fuzzy/fuzzy methods but interval Type II fuzzy thresholding method performs little bit better than intuitionistic fuzzy method. Segmented leukocytes in the proposed interval Type II fuzzy method are observed to be distinct and clear.
机译:本文利用直觉模糊和区间II型模糊集理论提出了病理性血细胞图像中的白细胞自动分割方法。这样做是为了计数不同类型的白细胞以进行疾病检测。同样,分割应该是准确的,以便保留白细胞的形状。因此,本文采用直觉模糊集和区间II型模糊集,与模糊集理论相比,它们考虑了更多不确定性或不同类型的不确定性。由于由于不精确的灰度级,图像被认为是模糊的,可以预期先进的模糊集理论会给出更好的结果。修改后的柯西分布用于查找隶属函数。在直觉模糊方法中,使用Yager的直觉模糊生成器获得非成员值。通过最小化直觉模糊散度来获得最佳阈值。在区间II型模糊集中,使用概率T co范数生成了一个新的隶属函数,该函数考虑了II型模糊集中的两个级别。通过最小化提议的II型模糊散度来选择最佳阈值。尽管较早应用了模糊技术,但是这些方法无法对图像中的多个白细胞进行阈值处理。实验结果表明,区间II型模糊方法和直觉模糊方法的性能均优于现有的非模糊/模糊方法,但区间II型模糊阈值方法的性能却比直觉模糊方法稍好。观察到在建议的间隔II型模糊方法中分割出的白细胞明显且清晰。

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