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Spatially invariant classification of tissues in MR images

机译:在MR图像中的空间不变分类

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Inhomogeneities in the fields of magnetic resonance (MR) systems cause the statistical characteristics of tissue classes to vary within the resulting MR images. These inhomogeneities must be taken into consideration when designing an algorithm for automated tissue classification. The traditional approach in image processing would be to apply a gain field correction technique to remove the inhomogeneities from the images. Statistical solutions would most likely focus on including spatial information in the feature space of the classifier so that it can be trained to model and adjust for the inhomogeneities. This paper will prove that neither of these general approaches offer a complete and viable solution. This paper will prove that neither of these general approaches offers a complete and viable solution. This paper will in fact show that not only do the inhomogeneities modify the local mean and variance of a tissue class as is commonly accepted, but the inhomogeneities also induce a rotation of the covariance matrices. As a result, gain field correction techniques cannot compensate for all of the artifacts associated with inhomogeneities. Additionally, it will be demonstrated that while statistical methods can capture all of the anomalies, the across patient and across time variations of the inhomogeneities necessitate frequent and time consuming retraining of any Bayesian classifier. This paper introduces a two stage process for MR tissue classification which addresses both of these issues by utilizing techniques from both image processing and statistics. First, a band-pass mean field corrector is used to alleviate the mean and variance deformations in each image. Then, using a kernel mixture model classifier couple to an interactive data augmentation tool, the user can selectively refine and explore the class representations for localized regions of the image and thereby capture the rotation of the covariance matrices. This approach is shown to outperform Gaussian classifiers and 4D mixture modeling techniques when both the final accuracy and user time requirements are considered.
机译:在磁共振领域的不均匀性(MR)系统引起组织类的统计特性,以所得到的MR图像内变化。这些不均匀性必须设计为自动组织分类的算法时,可以考虑。在图像处理中,传统的方法是施加增益场校正技术来从图像中除去的非均匀性。统计解决方案很可能会集中在包括分类的功能空间,空间信息,以便它可以训练模式和调整不均匀性。本文将证明,这些都不一般方法提供了一个完整的,可行的解决方案。本文将证明,这些一般的方法都不提供完整的和可行的解决方案。本文将在事实上表明,不仅做到了不均匀修改组织类作为被普遍接受的局部均值和方差,但也不均匀引起的协方差矩阵的旋转。其结果是,增益场校正技术不能补偿所有与非均匀性相关的工件。此外,将表明,尽管统计方法,可以捕获所有异常,不均匀性的跨病人和跨时间的变化必要频繁且耗时任何贝叶斯分类器的再培训。本文介绍了用于MR组织分类其中这两个问题通过从两个图像处理和统计技术利用地址的两个阶段工艺。首先,将带通平均场校正器用于缓解每个图像中的均值和方差的变形。然后,使用一个内核混合模型分类器耦合到一个交互式数据扩张工具,用户可以选择性地细化和探索类的表示的图像的局部区域,从而捕获协方差矩阵的旋转。这种方法被证明优于高斯分类器和4D混合物建模技术当最终准确性和用户二者的时间要求被考虑。

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