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Classification System for Cervical Cell Images based on Hu Moment Invariants Methods and Support Vector Machine

机译:基于胡时刻不变的方法和支持向量机的颈椎细胞图像分类系统

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Cervical cancer is one of the reproductive health diseases of women, which is still a major problem in the world due to the number of new cases and the high number of deaths, especially women in developing countries. Cervical cancer can be prevented by early detection. In developed countries, early detection of cervical cancer is carried out by the pap smear screening method. However, it is less effective if applied in developing countries due to limited human resources, expensive cost, inadequate infrastructure, and it is time-consuming. This study offers a cervical cell image classification system using Hu moment invariants for feature extraction technique and Support Vector Machine (SVM) classification with three types of cervical cell images, Normal, LSIL (Low-Grade Squamous Intraepithelial Lesion), and HSIL (High-Grade Squamous Intraepithelial Lesion). The classification system utilized three SVM models of Cubic SVM, Quadratic SVM and Fine Gaussian SVM, with HSIL class as positive data and LSIL and Normal as negative data. The accuracy value of the SVM classification results with the Hue moment for feature extraction was 71.9% for 0.98705s.
机译:宫颈癌是妇女的生殖健康疾病之一,由于新案例和大量死亡人数,尤其是发展中国家的妇女,这仍然是世界上的主要问题。早期检测可以防止宫颈癌。在发达国家,通过PAP涂片筛查方法进行宫颈癌的早期检测。然而,由于人力资源有限,昂贵的成本,基础设施不足,因此,如果在发展中国家申请,这是较低的效果。本研究提供了一种使用Hu Moreen Funiants的宫颈细胞图像分类系统,用于特征提取技术和支持向量机(SVM)分类,具有三种类型的宫颈细胞图像,正常,LSIL(低级鳞状上皮内病变)和HSIL(高 - 等级鳞状上皮内损伤)。分类系统利用三种SVM模型的立方SVM,二次SVM和精细高斯SVM,用HSIL类作为正数据和LSIL,正常作为否定数据。 SVM分类结果与特征提取的色调瞬间的精度值为71.9%,为0.98705s。

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