Detecting Smooth Surface Dental Caries in Frontal Teeth Using Image Processing

Patric Kiel Navarro, Jihan Karla Cadongonan, Michael Reyes, J. D. Goma
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引用次数: 6

Abstract

Dental caries is one of the most common tooth diseases in the world which affects people of all ages. In this study, we developed a model that detects and locates smooth surface carious regions in frontal teeth images using Support Vector Machine and Decision Tree in MATLAB R2018a Classification Learner. A total of 45 images with smooth surface dental caries were used which consists of 30 training images and 15 images for testing and validation. Images are pre-processed using Histogram Equalization and are segmented further into 10x10 blocks where the set of color and texture features such as Intensity, Gradient, Hue, Saturation, and Entropy were extracted. The study showed significant results with an accuracy of 84% and 78% using Decision Tree and SVM respectively which proved the effectivity of the use of image processing techniques on classification and location of dental caries.
利用图像处理技术检测门牙光滑面龋
龋齿是世界上最常见的牙齿疾病之一,影响着所有年龄段的人。在本研究中,我们在MATLAB R2018a分类学习器中使用支持向量机和决策树开发了一种检测和定位门牙图像中光滑表面龋齿区域的模型。共使用45张光滑表面龋图像,其中30张为训练图像,15张为测试验证图像。使用直方图均衡化对图像进行预处理,并进一步分割为10x10块,其中提取颜色和纹理特征集,如强度,梯度,色调,饱和度和熵。研究结果表明,决策树和支持向量机的准确率分别为84%和78%,证明了图像处理技术在龋齿分类和定位方面的有效性。
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