牙龄评估中均值、中位数和otsu阈值自适应阈值分割区域

M. Razali, N. S. Ahmad, Z. M. Zaki, W. Ismail
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引用次数: 19

摘要

自适应阈值在像素级工作,自适应阈值的结果是背景或前景。对于像素强度分布不均匀的图像,自适应阈值效果优于全局阈值。在牙齿年龄评估中,x线图像是用来辅助估计人的年龄。现有的评估过程是手动完成的。然而,这可以自动完成。在牙龄自动评估的过程中,需要对背景和牙区进行阈值分割。为了优化自适应阈值的结果,它依赖于阈值。在本文中,我们提出了三种方法(即均值,中位数和OTSU)来估计阈值的范围。研究结果表明,中位数阈值比平均值和OTSU阈值提供更好的结果。从分割的区域来看,中值阈值覆盖的齿数较多,其次是均值阈值和OTSU阈值。分割区域很重要,因为Demirjian方法的要求之一是评估象限2和象限3中的所有牙齿类型。实验结果表明,中值阈值区域能够分割出象限2和象限3的大部分牙齿区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Region of adaptive threshold segmentation between mean, median and otsu threshold for dental age assessment
Adaptive threshold works at pixel level and the result of the adaptive threshold is either background or foreground. The adaptive threshold produces superior result compared to global threshold, especially for the images that have uneven pixel intensity distribution. In the dental age assessment, X-ray image is used as an aid to estimate the age of the person. The existing process of assessment is done manually. However, this can be made automatically. The process of automated dental age assessment, require threshold segmentation to separate the background and the teeth area. In order to optimize the result of the adaptive threshold, it depends on the threshold value. In this paper, we present three methods (i.e. mean, median and OTSU) to estimate the range of the threshold value. The result of the study shown that the median threshold provides better results than the mean and OTSU thresholds. In terms of the region of the segmentation, median threshold value covers more teeth followed by mean threshold and OTSU threshold. The region of segmentation is important because one of the requirements in Demirjian method is to assess all the teeth types in quadrant 2 and quadrant 3.Based on the result of the experiment shown the region of median threshold able to segment most of the teeth area in quadrant 2 and quadrant 3.
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