Ensembles of Convolutional Neural Networks for Skin Lesion Dermoscopy Images Classification

Muhammad Ammarul Hilmy, P. S. Sasongko
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引用次数: 5

Abstract

Skin cancer is a public health problem with more than 123,000 new cases diagnosed worldwide every year. System skin cancer screening reliable automatic will provide a great help for doctors to detect skin lesions as early as possible. The efficiency of deep learning based methods has recently outperformed conventional image processing methods in terms of classification. This study applied an ensemble of CNN to classify 7 categories of skin lesions. The preprocessing stage is hair removal, image resizing, and image augmentation. Model evaluation results with 1,440 test data indicate that the ensemble model achieve the best accuracy of 91.7% with a combination of learning rate parameters of le-3 and the use of dropouts in the model architecture.
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基于卷积神经网络的皮肤病变皮肤镜图像分类
皮肤癌是一个公共卫生问题,全世界每年有超过12.3万例新诊断病例。系统可靠的皮肤癌自动筛查将为医生尽早发现皮肤病变提供很大的帮助。最近,基于深度学习的方法在分类方面的效率超过了传统的图像处理方法。本研究采用CNN集合对7类皮肤病变进行分类。预处理阶段是脱毛、图像调整大小和图像增强。1440个测试数据的模型评价结果表明,结合学习率参数le-3和模型架构中dropouts的使用,集成模型达到了91.7%的最佳准确率。
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