Comparative Study of Multiple CNN Models for Classification of 23 Skin Diseases

Amina Aboulmira, H. Hrimech, M. Lachgar
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引用次数: 2

Abstract

Cutaneous disorders are one of the most common burdens world-wide, that affects 30% to 70% of individuals. Despite its prevalence, skin disease diagnosis is highly difficult due to several influencing visual clues, such as the complexities of skin texture, the location of the lesion, and presence of hair. Over 1500 identified skin disorders, ranging from infectious disorders and benign tumors to severe inflammatory diseases and malignant tumors, that often have a major effect on the quality of life. In this paper, several deep CNN architectures are proposed, exploring the potential of Deep Learning trained on “DermNet” dataset for the diagnosis of 23 type of skin diseases. These architectures are compared in order to choose the most performed one. Our approach shows that DenseNet was the most performed one for the skin disease classification using DermNet Dataset with a Top-1 accuracy of 68.97% and Top-5 accuracy of 89.05%.
多种CNN模型在23种皮肤病分类中的比较研究
皮肤病是世界范围内最常见的负担之一,影响到30%至70%的个体。尽管发病率很高,但由于一些影响视觉线索的因素,如皮肤质地的复杂性、病变的位置和毛发的存在,皮肤病的诊断非常困难。确定了1500多种皮肤病,从传染性疾病和良性肿瘤到严重炎症性疾病和恶性肿瘤,这些疾病往往对生活质量产生重大影响。本文提出了几种深度CNN架构,探索在“DermNet”数据集上训练的深度学习在23种皮肤病诊断中的潜力。对这些体系结构进行比较,以选择性能最高的体系结构。我们的方法表明,DenseNet是使用DermNet数据集进行皮肤病分类的最佳方法,前1准确率为68.97%,前5准确率为89.05%。
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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