Comparison of segmentation of CU-Net,DRU-Net and DU-Net on Cervical Cancer Data Set *

Sushama Rani Dutta, Priyadarshini Chatterjee, Majeed Rafeeq
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Abstract

Cervical cancer is one of the most prevalent disease in women.Timely detection of cervical cancer can save lives.Automated detection of cervical cancer tools can be devised whose reliability depends on the rate of accuracy of segmentation of Pap Smear images.For segmenting medical images there are variants of U-Nets available. There are various papers in this area of research that deals particularly with the segmentation of overlapped nucleus.This paper guides the researchers of medical image processing to select the U-Net that gives a trustworthy result.Condensed U-Net,DU-Net and DRU-Net are recent developments in the field of U-Nets.Data sets that are used in this paper are secondary data set taken from 2018 Data Science Bowl on which these three U-Nets are implemented.The accuracy,precision,and Recall values are tabulated to provide a comparison on the performance of these three U-Nets on a cervical cancer data set.
宫颈癌数据集上CU-Net、drug - net和DU-Net的分割比较*
子宫颈癌是妇女中最常见的疾病之一。及时发现子宫颈癌可以挽救生命。可以设计出宫颈癌自动检测工具,其可靠性取决于子宫颈抹片图像分割的准确性。对于医学图像分割,有多种U-Nets可用。在这一研究领域有许多论文专门研究重叠核的分割。本文指导医学图像处理研究者选择具有可靠结果的U-Net。浓缩U-Net、DU-Net和dr - net是U-Net领域的最新发展。本文中使用的数据集是取自2018年数据科学碗(Data Science Bowl)的辅助数据集,这三个U-Nets都是在该数据碗上实现的。准确度、精密度和召回值被制成表格,以比较这三种U-Nets在宫颈癌数据集上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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