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一种使用数学形态学和主动外观模型进行自动头影测量标志点检测的方法。

An approach for the automatic cephalometric landmark detection using mathematical morphology and active appearance models.

作者信息

Rueda Sylvia, Alcañiz Mariano

机构信息

Medical Image Computing Laboratory, Universidad Politécnica de Valencia, UPV/ETSIA, Camino de Vera s/n, 46022 Valencia, Spain.

出版信息

Med Image Comput Comput Assist Interv. 2006;9(Pt 1):159-66. doi: 10.1007/11866565_20.

Abstract

Cephalometric analysis of lateral radiographs of the head is an important diagnosis tool in orthodontics. Based on manually locating specific landmarks, it is a tedious, time-consuming and error prone task. In this paper, we propose an automated system based on the use of Active Appearance Models (AAMs). Special attention has been paid to clinical validation of our method since previous work in this field used few images, was tested in the training set and/or did not take into account the variability of the images. In this research, a top-hat transformation was used to correct the intensity inhomogeneity of the radiographs generating a consistent training set that overcomes the above described drawbacks. The AAM was trained using 96 hand-annotated images and tested with a leave-one-out scheme obtaining an average accuracy of 2.48mm. Results show that AAM combined with mathematical morphology is the suitable method for clinical cephalometric applications.

摘要

头部侧位X线片的头影测量分析是正畸学中一种重要的诊断工具。基于手动定位特定标志点,这是一项繁琐、耗时且容易出错的任务。在本文中,我们提出了一种基于主动外观模型(AAM)的自动化系统。由于该领域之前的工作使用的图像较少、在训练集中进行测试和/或没有考虑图像的变异性,因此我们特别关注了我们方法的临床验证。在这项研究中,使用了顶帽变换来校正X线片的强度不均匀性,生成了一个一致的训练集,克服了上述缺点。使用96张手工标注的图像对AAM进行训练,并采用留一法进行测试,平均精度为2.48毫米。结果表明,AAM与数学形态学相结合是临床头影测量应用的合适方法。

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