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Pap-smear Image Classification Using Randomized Neural Network Based Signature

机译:基于随机神经网络签名的子宫颈抹片图像分类

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This paper presents a state-of-the-art texture analysis method called "randomized neural network based signature" applied to the classification of pap-smear cell images for the Papanicolaou test. For this purpose, we used a well-known benchmark dataset composed of 917 images and compared the aforementioned image signature to other texture analysis methods. The obtained results were promising, presenting accuracy of 87.57% and AUC of 0.8983 using LDA and SVM, respectively. These performance values confirm that the randomized neural network based signature can be applied successfully to this important medical problem.
机译:本文提出了一种最新的纹理分析方法,称为“基于随机神经网络的签名”,用于对巴氏涂片检查的巴氏涂片细胞图像进行分类。为此,我们使用了由917张图像组成的众所周知的基准数据集,并将上述图像签名与其他纹理分析方法进行了比较。获得的结果是有希望的,使用LDA和SVM分别可提供87.57%的精度和0.8983的AUC。这些性能值证实了基于随机神经网络的签名可以成功地应用于这个重要的医学问题。

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