An Effective Approach for Classification of Dental Caries using Convolutional Neural Networks

A. Choudhary, G. Raj, A. Agrawal, Hemant Sawhney, P. Nand, Deepak Bhargava
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引用次数: 1

Abstract

In 20th century, Dental Caries have become a major health issue globally. According to WHO, 2.3 billion adults and 530 million children are suffering from dental caries-related issues. This problem can be controlled by early accurate detection and treatments. There exist many approaches in the literature to classify dental caries. But accuracy of these approaches is still a challenge. This paper proposes an effective approach using convolutional neural networks by adopting VGG16 and VGG19 models. The patient’s X-Ray images have been collected and labeled. The proposed models have been compared on the collected datasets. The results over this dataset indicate the superiority of VGG19 based model with 95% accuracy as compared to VGG16 based model with 91% accuracy.
一种基于卷积神经网络的龋齿分类方法
在20世纪,龋齿已成为全球性的重大健康问题。据世卫组织称,23亿成年人和5.3亿儿童患有与龋齿有关的问题。这个问题可以通过早期准确的检测和治疗来控制。目前文献中有多种方法对龋齿进行分类。但这些方法的准确性仍然是一个挑战。本文采用VGG16和VGG19模型,提出了一种有效的卷积神经网络方法。已收集并标记了患者的x光片。在已收集的数据集上对所提出的模型进行了比较。基于该数据集的结果表明,基于VGG19的模型准确率为95%,优于基于VGG16的模型,准确率为91%。
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