基于预处理技术和卷积神经网络的全景放射影像牙囊肿自动检测

Jinu Thomas, V. Ulagamuthalvi
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引用次数: 0

摘要

口腔相关疾病是公共当局面临的一个重要挑战。通过计算机视觉技术的研究,开发一种方法,用于自动识别全景放射摄影图像中的牙囊肿,为牙科专业人员提供另一种帮助解释这些图像的方法。为此,使用图像预处理技术对两种CNN架构进行了分类和实验分析。其中使用形态对比的建议具有更好的性能,精度为0.937,F1得分为0.847。
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Automatic Detection of Dental Cysts in Panoramic Radiography Images using Preprocessing Techniques and Convolutional Neural Networks
Mouth-related pathologies represent an important challenge for public authorities. To develop a methodology, through studies on Computer Vision techniques, for the automatic identification of dental cysts in panoramic radiography images, providing Dental professionals with an alternative to aid in the interpretation of these images. For this purpose, two CNN architectures were analyzed for classification and experimentation using image pre-processing techniques. One such proposal, using morphological contrast, had a better performance, with a precision of 0.937 and an F1 score of 0.847.
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