The Use of Pre and Post Processing to Enhance Mandible Segmentation using Active Contours on Dental Panoramic Radiography Images

Nur Nafi’iyah, C. Fatichah, Eha Renwi Astuti, D. Herumurti
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引用次数: 4

Abstract

Mandibular segmentation is indispensable to support the automation of the gender detection system based on the dental panoramic radiography image. However, the dental panoramic radiography image has low image contrast, the gray intensity value inhomogeneous, and the gray intensity value between the teeth and mandibular bone is almost indistinguishable. So, a good segmentation method is required to separate the mandible and teeth properly. This study aims to analyze the effect of the use of preprocessing and post-processing to enhance mandible segmentation on dental panoramic radiography images properly. In the preprocessing, we use contrast enhancement and Gaussian filters to make the mandibular area more prominent. Meanwhile, in the post-processing, we use erosion and opening morphology to remove the tooth area attached to the mandible. The mandibular segmentation uses the Active Contours method with predefined contour initialization. The dataset used is 86 dental panoramic radiographic images and the segmentation evaluation method uses Jaccard similarity. The experimental results show that the mandibular segmentation with preprocessing and postprocessing obtain Jaccard similarity values are 0.31 and 0.34, on average. Meanwhile, the results of mandibular segmentation with post-processing achieve the Jaccard similarity values are 0.51 and 0.52, on average.
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利用活动轮廓对牙科全景放射成像图像进行前后处理以增强下颌分割
下颌分割是支持基于口腔全景x线图像的性别检测系统自动化的必要条件。然而,牙科全景x线摄影图像图像对比度低,灰度值不均匀,牙齿和颌骨之间的灰度值几乎无法区分。因此,需要一种良好的分割方法来将下颌骨和牙齿正确分离。本研究旨在分析使用预处理和后处理对牙齿全景x线摄影图像进行下颌分割的效果。在预处理中,我们使用对比度增强和高斯滤波使下颌区域更加突出。同时,在后处理中,我们使用侵蚀和开放形态学去除附着在下颌骨上的牙齿区域。下颌分割采用主动轮廓法,并对轮廓进行预定义初始化。使用的数据集为86张牙科全景放射图像,分割评价方法采用Jaccard相似度。实验结果表明,经过预处理和后处理的下颌图像分割得到的Jaccard相似度均值分别为0.31和0.34。同时,经过后处理的下颌分割结果,其Jaccard相似值平均为0.51和0.52。
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