Classification of dental diseases using CNN and transfer learning

S. A. Prajapati, R. Nagaraj, S. Mitra
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引用次数: 101

Abstract

Automated medical assistance system is in high demand with the advances in research in the machine learning area. In many such applications, availability of labeled medical dataset is a primary challenge and dataset of dental diseases is not an exception. An attempt towards accurate classification of dental diseases is addressed in this paper. Labeled dataset consisting of 251 Radio Visiography (RVG) x-ray images of 3 different classes is used for classification. Convolutional neural network (CNN) has become a most effective tool in machine learning which enables solving the problems like image recognition, segmentation, classification, etc., with high order of accuracy. It is found from literature that CNN performs well in natural image classification problems where large dataset is available. In this paper we experimented on the performance of CNN for diagnosis of small labeled dental dataset. In addition, transfer learning is used to improve the accuracy. Experimental results are presented for three different architectures of CNN. Overall accuracy achieved is very encouraging.
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基于CNN和迁移学习的牙病分类
随着机器学习领域的研究进展,对自动化医疗辅助系统的需求越来越大。在许多这样的应用中,标记医学数据集的可用性是一个主要挑战,牙科疾病数据集也不例外。本文试图对牙病进行准确的分类。使用3个不同类别的251张RVG x射线图像组成的标记数据集进行分类。卷积神经网络(CNN)已经成为机器学习中最有效的工具,能够以高阶精度解决图像识别、分割、分类等问题。从文献中发现,CNN在大数据集可用的自然图像分类问题中表现良好。在本文中,我们对CNN用于小标记牙科数据集的诊断性能进行了实验。此外,还采用迁移学习的方法来提高准确率。给出了三种不同CNN架构的实验结果。获得的总体准确性非常令人鼓舞。
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