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The Effect of Labeled/Unlabeled Prior Information for Masseter Segmentation

机译:标记/未标记的先验信息对咬肌分割的影响

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摘要

Several segmentation methods are implemented and applied to segment the facial masseter tissue from magnetic resonance images. The common idea for all methods is to take advantage of prior information from different MR images belonging to different individuals in segmentation of a test MR image. Standard atlas-based segmentation methods and probabilistic segmentation methods based on Markov random field use labeled prior information. In this study, a new approach is also proposed where unlabeled prior information from a set of MR images is used to segment masseter tissue in a probabilistic framework. The proposed method uses only a seed point that indicates the target tissue and performs automatic segmentation for the selected tissue without using labeled training set. The segmentation results of all methods are validated and compared where the influences of labeled or unlabeled prior information and initialization are discussed particularly. It is shown that if appropriate modeling is done, there is no need for labeled prioir information. The best accuracy is obtained by the proposed approach where unlabeled prior information is used.
机译:实施了几种分割方法并将其应用于从磁共振图像分割面部咬肌组织。所有方法的共同思想是在测试MR图像的分割中利用来自属于不同个体的不同MR图像的先验信息。基于标准图集的分割方法和基于马尔可夫随机场的概率分割方法均使用标记的先验信息。在这项研究中,还提出了一种新方法,其中使用来自一组MR图像的未标记先验信息在概率框架中分割咬肌组织。所提出的方法仅使用指示目标组织的种子点,并对选定的组织执行自动分割,而无需使用标记的训练集。验证并比较了所有方法的分割结果,其中特别讨论了标记或未标记的先验信息和初始化的影响。结果表明,如果进行了适当的建模,则无需标记的信息。通过使用未标记的先验信息的建议方法可获得最佳准确性。

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  • 来源
    《Mathematical Problems in Engineering》 |2013年第7期|928469.1-928469.12|共12页
  • 作者单位

    Biomedical Engineering Department, Middle East Technical University, 06800 Ankara, Turkey;

    Electrical Engineering Department, Middle East Technical University, 06800 Ankara, Turkey;

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  • 正文语种 eng
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