宫颈癌数据集上五个 U-Net 的性能分析

Priyadarshini Chatterjee, Shadab Siddiqui, Giuseppe Granata, Prasanjit Dey, Razia Sulthana Abdul Kareem
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引用次数: 0

摘要

图像分割对于生物医学图像的精确分析和分类至关重要,尤其是在宫颈癌检测领域。图像分割的准确性极大地影响着后续图像分类过程的效率。虽然有传统的图像分割算法,但卷积神经网络,特别是 U-Nets 的最新进展显示了其卓越的功效,尤其是在生物医学成像领域。本研究的重点是评估各种 U-Net 架构应用于三个不同宫颈癌数据集的准确性,即包含 1340 张图像的 DSB、包含 1849 张图像的 SipakMed 和包含 2000 张图像的 Intel Images for Screening 数据集(摘自 2018 年数据科学碗)。所研究的 U-Net 架构包括基本 U-Net、注意力 U-Net、双重 U-Net、空间注意力 U-Net 和残差 U-Net。U-Net 的性能根据以下指标进行评判:Recall、Precision、F1、Jaccard 和 Accuracy。据观察,DSB 数据集上的基本 U-Net 在这些指标上提供了最高值,准确率达到 96%。DSB 数据集准确率高的原因在于图像的对比度,使用共生矩阵计算出的对比度为 145。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of Five U-Nets on Cervical Cancer Datasets
Image segmentation is crucial for precise analysis and classification of biomedical images, especially in the realm of cervical cancer detection. The accuracy of segmentation significantly influences the efficacy of subsequent image classification processes. While traditional algorithms exist for image segmentation, recent advancements in convolutional neural networks, particularly U-Nets have showcased exceptional effectiveness, especially in the realm of biomedical imaging. This research focuses on evaluating the accuracy of various U-Net architectures applied to three distinct cervical cancer datasets i.e., DSB containing 1340 images, SipakMed containing 1849 images and Intel Images for Screening containing 2000 images datasets taken from 2018 Data Science Bowl. The investigated U-Net architectures comprise the fundamental U-Net, Attention U-Net, Double U-Net, Spatial Attention U-Net, and Residual U-Net. The performance of the u-nets is judged on the metrics: Recall, Precision, F1, Jaccard and Accuracy. It is observed that Basic U-Net on the DSB dataset provides highest value on these metrices and accuracy obtained is 96%. The reason of high accuracy for DSB dataset can be attributed to the contrast of the images which by using co-occurrence matrix is calculated as 145.
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