牙科图像处理的趋势分析

Kyeong-Jin Park, Keun-Chang Kwak
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引用次数: 5

摘要

随着医学影像设备的发展,图像分割技术在医学诊断中的作用越来越重要,高清晰度的数字图像采集已成为可能。此外,由于深度学习和CNN(卷积神经网络)等人工智能的积极分割、分类和识别研究,也进行了大量的牙科成像研究。本文对口腔图像处理的发展趋势进行了综述。对于使用深度学习的方法,进行了AlexNet, GoogLeNet等各种方法。一般方法采用Otsu法、O. Nomir法、Level-Set、Watershed等多种方法。结果表明,这些方法在牙齿图像分割中准确率大多达到80% ~ 90%。
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A Trends Analysis of Dental Image Processing
With the recent development of medical imaging equipment, image segmentation techniques for medical diagnosis have become important role as digital image acquisition with good clarity has become possible. In addition, a lot of dental imaging studies have been conducted due to the active segmentation, classification and recognition research using artificial intelligence such as deep learning and CNN (Convolutional Neural Network). In the paper, trends reviews are conducted on dental image processing. For methods using deep learning, AlexNet, GoogLeNet, and other various methods were conducted. For general methods, Otsu's method, O. Nomir's method, Level-Set, Watershed, and other various methods were used. As a result, these methods mostly showed 80% ~ 90% accuracy in the case of dental image segmentation.
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