首页> 外文会议>Image Processing pt.1; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Non-rigid brain image registration using a statistical deformation model
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Non-rigid brain image registration using a statistical deformation model

机译:使用统计变形模型进行非刚性脑图像配准

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In this article, we propose a new registration method, based on a statistical analysis of deformation fields. At first, a set of MRI brain images was registered using a viscous fluid algorithm. The obtained deformation fields are then used to calculate a Principal Component Analysis (PCA) based decomposition. Since PCA models the deformations as a linear combination of statistically uncorrelated principal components, new deformations can be created by changing the coefficients in the linear combination. We then use the PCA representation of the deformation fields to non-rigidly align new sets of images. We use a gradient descent method to adjust the coefficients of the principal components, such that the resulting deformation maximizes the mutual information between the deformed image and an atlas image. The results of our method are promising. Viscous fluid registrations of new images can be recovered with an accuracy of about half a voxel. Better results can be obtained by using a more extensive database of learning images (we only used 84). Also, the optimization method used here can be improved, especially to shorten computation time.
机译:在本文中,我们基于变形场的统计分析提出了一种新的配准方法。首先,使用粘性流体算法记录了一组MRI脑图像。然后,将获得的变形场用于计算基于主成分分析(PCA)的分解。由于PCA将变形建模为统计上不相关的主成分的线性组合,因此可以通过更改线性组合中的系数来创建新的变形。然后,我们使用变形场的PCA表示非刚性地对齐新的图像集。我们使用梯度下降法来调整主成分的系数,以使所产生的变形最大化变形图像和图集图像之间的互信息。我们方法的结果很有希望。新图像的粘性流体配准可以约一半体素的精度恢复。使用更广泛的学习图像数据库可以获得更好的结果(我们仅使用84)。此外,可以改进此处使用的优化方法,尤其是可以缩短计算时间。

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