比较视觉变换器和卷积神经网络在皮肤病分类中的应用

Muhammet Fatih Aslan
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摘要

皮肤病是人类最常见的疾病之一。由于皮肤病的症状和类型多种多样,计算机视觉研究经常被应用于皮肤病的诊断和分类。以往的研究经常将机器学习方法和基于深度学习的卷积神经网络(CNN)用于皮肤病诊断。虽然基于深度学习的应用在检测准确性方面取得了巨大成功,但为确保达到预期性能,研究仍在继续。然而,最近作为 CNN 的竞争性替代品而提出的视觉变换器(ViT)正日益受到欢迎。本文将重要的 CNN 模型 ResNet18 和 ResNet50 网络与 ViT 在皮肤病分类方面进行了比较。比较是在包含少量样本的数据集上进行的。在对包含皮肤病图像的数据集进行的应用中,ViT 的分类准确率为 68.93%,而 ResNet18 和 ResNet50 的分类准确率分别为 61.65% 和 61.17%。与准确率一起计算的其他指标也证明了 ViT 优于 ResNet 模型。不过,ViT 在训练时间方面有很大的劣势。
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COMPARISON OF VISION TRANSFORMERS AND CONVOLUTIONAL NEURAL NETWORKS FOR SKIN DISEASE CLASSIFICATION
Skin diseases are one of the most common diseases in humans. Due to its many various symptoms and types, computer vision studies have been frequently applied to its diagnosis and classification. Previous studies have frequently used machine learning methods and deep learning-based Convolutional Neural Networks (CNN) for skin disease diagnosis. Although deep learning-based applications have achieved great success in terms of detection accuracy, research continues to ensure the desired performance. However, Vision Transformer (ViT), recently proposed as a competitive alternative to CNNs, is gaining increasing popularity. This paper compares ResNet18 and ResNet50 networks, important CNN models, with ViT for classifying skin disease. The comparison is applied on a dataset containing a small number of samples. In the application performed on a dataset containing skin disease images, ViT provides 68.93% classification accuracy, while ResNet18 and ResNet50 classification accuracy is 61.65% and 61.17%, respectively. Other metrics calculated along with the accuracies also prove the superiority of ViT over ResNet models. However, ViT has a big disadvantage in terms of training time.
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