不平衡皮肤癌分类数据集的改进Inception-v4

Taha Emara, H. Afify, F. H. Ismail, A. Hassanien
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引用次数: 15

摘要

深度学习架构,特别是深度卷积神经网络(CNN)在目标分类和定位任务上实现了高精度。实现如此高的精度需要强大的设备。本文采用从HAM10000数据集中提取的Inception-v4模型进行分类,而不是多个复杂模型的集成。采用长残差连接对特征进行重用,将较早层提取的特征与较高级层连接在一起,从而提高模型的分类性能。本研究使用的数据集是不平衡的;因此,采用数据采样的方法来缓解数据不平衡的影响。使用国际皮肤成像协作(ISIC) 2018年官方基准提供的测试集,所提出的架构实现了94.7%的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Modified Inception-v4 for Imbalanced Skin Cancer Classification Dataset
Deep learning architectures, especially deep convolutional neural networks (CNN) achieve high accuracy on object classification and localization tasks. Achieving such high accuracy requires powerful devices. In this paper, rather than an ensemble of multiple complex models, a single Inception-v4 model is adapted to classify extracted from the HAM10000 dataset. The proposed model is enhanced by employing feature reuse using long residual connection in which the features extracted from earlier layers are concatenated with the high-level layers to increase the model classification performance. The dataset used in this study is imbalanced; therefore, a data sampling approach is used to mitigate the data imbalance effect. The proposed architecture achieves an accuracy of 94.7% using the provided test set at the official benchmark for the International Skin Imaging Collaboration (ISIC) 2018.
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