3D image segmentation is a recent and crucial step in many medical analysis and recognition schemes. In fact, it represents a relevant research subject and a fundamental challenge due to its importance and influence. This paper provides a multi-phase Deep Learning-based system that hybridizes various efficient methods in order to get the best 3D segmentation output. First, to reduce the amount of data and accelerate the processing time, the application of Decimate compression technique is suggested and justified. We then use a CNN model to segment dental images into fifteen separated classes. In the end, a special KNN-based transformation is applied for the purpose of removing isolated meshes and of correcting dental forms. Experimentations demonstrate the precision and the robustness of the selected framework applied to 3D dental images within a private clinical benchmark.
翻译:3D图像分解是许多医学分析和识别方案中最近的一个关键步骤,事实上,它是一个相关的研究课题,由于其重要性和影响,是一个根本性的挑战;本文件提供了一个多阶段的深学习系统,将各种有效的方法混合起来,以获得最佳的3D分解输出。首先,为了减少数据数量和加快处理时间,建议并论证了Decimate压缩技术的应用。然后,我们用CNN模型将牙科图像分解成15个分开的类别。最后,为了消除孤立的代谢和纠正牙科形式,应用了特殊的KNN, 实验显示了在私人临床基准范围内对3D牙科图像应用的特定框架的精确性和可靠性。