Deep Melanoma classification with K-Fold Cross-Validation for Process optimization

Yali Nie, L. D. Santis, M. Carratù, M. O’nils, P. Sommella, J. Lundgren
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引用次数: 11

Abstract

Deep convolution neural networks (DCNNs) enable effective methods to predict the melanoma classes otherwise found with ultrasonic extraction. However, gathering large datasets in local hospitals in Sweden can take years. Small datasets will result in models with poor accuracy and insufficient generalization ability, which has a great impact on the result. This paper proposes to use a K-Fold cross validation approach based on a DCNN algorithm working on a small sample dataset. The performance of the model is verified via a Vgg16 extracting the features. The experimental results reveal that the model built by the approach proposed in this paper can effectively achieve a better prediction and enhance the accuracy of the model, which proves that K-Fold can achieve better performance on a small skin cancer dataset.
基于K-Fold交叉验证的深度黑色素瘤分类优化
深度卷积神经网络(DCNNs)能够有效地预测黑色素瘤的类别,否则会发现超声提取。然而,在瑞典当地医院收集大型数据集可能需要数年时间。数据集小会导致模型精度差,泛化能力不足,对结果影响很大。本文提出在小样本数据集上使用基于DCNN算法的K-Fold交叉验证方法。通过Vgg16提取特征,验证了模型的性能。实验结果表明,采用本文提出的方法构建的模型可以有效地实现更好的预测,并提高模型的精度,这证明K-Fold在小型皮肤癌数据集上可以取得更好的性能。
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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