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Channel based Threshold Segmentation of Multi-Class Cervical Cancer using Mean and Standard Deviation on Pap Smear Images

机译:在子宫颈抹片图像上使用均值和标准差对多类宫颈癌进行基于通道的阈值分割

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Cervical cancer is the second most dangerous metastatic tumor where grows in a woman's cervix. Pap smear is the simplest screening test for the detection of cancer at the starting stage. Cervical cancer has two types of Normality and abnormality cancer which contains the cell and cytoplasm in the same structure. It is difficult to identify a cancerous nucleus in the cell. In Image processing, various algorithms are used to segment the nucleus alone in microscopic images. The primary scope of this paper is focusing on Pre-processing, Segmentation and Feature Extraction with six levels of Pap images. The performance evaluation has been calculated based on the segmentation results. In the first phase, pre-processing used mean filters to remove noise and enhanced with CLAHE. In the second phase, Segmentation used threshold value by taking the sum of three channels with the proposed methodology in mean and standard deviation. In the third phase, Properties of image regions, Shapes, Textures and some statistical features are extracted after segmentation. To evaluate performance measure used SSIM for each type of cancerous segmentation that is compared with K-means and Fuzzy C-means algorithm. Thus, the proposed work of separation and addition of RGB channel based segmentation gives the best results for nucleus segmentation in Pap smear images. The accuracy level 94.60 % has been obtained by using SVM and KNN classification for 182 Pap smear images with a class of six labels. Matlab R2016a is used as a programming tool.
机译:宫颈癌是第二个最危险的转移性肿瘤,在女性的子宫颈中生长。子宫颈抹片检查是在开始阶段检测癌症的最简单的筛选测试。宫颈癌有两种类型的正常和异常癌,它们的细胞和细胞质结构相同。很难鉴定细胞中的癌核。在图像处理中,各种算法用于在显微图像中单独分割核。本文的主要范围集中在具有六级Pap图像的预处理,分割和特征提取上。已根据细分结果计算了性能评估。在第一阶段,预处理使用均值滤波器消除噪声,并通过CLAHE进行增强。在第二阶段,分割采用阈值,方法是采用建议的方法在平均值和标准差下取三个通道的总和。在第三阶段,分割后提取图像区域的属性,形状,纹理和一些统计特征。为了评估性能评估,将每种类型的癌性分割所使用的SSIM与K均值和Fuzzy C均值算法进行比较。因此,基于RGB通道的分割的分离和添加的拟议工作为巴氏涂片图像中的核分割提供了最佳结果。通过对六个标签分类的182例子宫颈抹片检查图像使用SVM和KNN分类,已获得94.60%的准确度。 Matlab R2016a用作编程工具。

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