...
首页> 外文期刊>Medical Imaging, IEEE Transactions on >Feature Based Nonrigid Brain MR Image Registration With Symmetric Alpha Stable Filters
【24h】

Feature Based Nonrigid Brain MR Image Registration With Symmetric Alpha Stable Filters

机译:基于特征的非刚性脑MR图像配准对称Alpha稳定滤波器

获取原文
获取原文并翻译 | 示例

摘要

A new feature based nonrigid image registration method for magnetic resonance (MR) brain images is presented in this paper. Each image voxel is represented by a rotation invariant feature vector, which is computed by passing the input image volumes through a new bank of symmetric alpha stable $(Salpha S)$ filters. There are three main contributions presented in this paper. First, this work is motivated by the fact that the frequency spectrums of the brain MR images often exhibit non-Gaussian heavy-tail behavior which cannot be satisfactorily modeled by the conventional Gabor filters. To this end, we propose the use of $Salpha S$ filters to model such behavior and show that the Gabor filter is a special case of the $Salpha S$ filter. Second, the maximum response orientation (MRO) selection criterion is designed to extract rotation invariant features for registration tasks. The MRO selection criterion also significantly reduces the number of dimensions of feature vectors and therefore lowers the computation time. Third, in case the segmentations of the input image volumes are available, the Fisher's separation criterion (FSC) is introduced such that the discriminating power of different feature types can be directly compared with each other before performing the registration process. Using FSC, weights can also be assigned automatically to different voxels in the brain MR images. The weight of each voxel determined by FSC reflects how distinctive and salient the voxel is. Using the most distinctive and salient voxels at the initial stage to drive the registration can reduce the risk of being trapped in the local optimum during image registration process. The larger the weight, the more important the voxel. With the extracted feature vectors and the associated wei-nghts, the proposed method registers the source and the target images in a hierarchical multiresolution manner. The proposed method has been intensively evaluated on both simulated and real 3-D datasets obtained from BrainWeb and Internet Brain Segmentation Repository (IBSR), respectively, and compared with HAMMER, an extended version of HAMMER based on local histograms (LHF), FFD, Demons, and the Gabor filter based registration method. It is shown that the proposed method achieves the highest registration accuracy among the five widely used image registration methods.
机译:本文提出了一种基于特征的非刚性图像配准方法,用于磁共振图像。每个图像体素都由旋转不变特征向量表示,该向量通过使输入图像体积通过一组新的对称alpha稳定$(Salpha S)$过滤器来计算。本文提出了三个主要贡献。首先,这项工作的动机是大脑MR图像的频谱经常表现出非高斯的重尾行为,而传统的Gabor滤波器无法令人满意地模拟这种行为。为此,我们建议使用$ Salpha S $过滤器对这种行为进行建模,并表明Gabor过滤器是$ Salpha S $过滤器的特例。其次,最大响应方向(MRO)选择标准旨在提取用于注册任务的旋转不变特征。 MRO选择标准还显着减少了特征向量的维数,因此减少了计算时间。第三,在输入图像体积的分割可用的情况下,引入费舍尔分离准则(FSC),以便可以在执行配准过程之前将不同特征类型的区分能力直接进行比较。使用FSC,权重也可以自动分配给大脑MR图像中的不同体素。由FSC确定的每个体素的重量反映了该体素的独特性和突出性。在初始阶段使用最独特,最显着的体素驱动配准可以减少在图像配准过程中陷入局部最优的风险。重量越大,体素越重要。利用所提取的特征向量和相关的权重,该方法以分层的多分辨率方式注册源图像和目标图像。分别对从BrainWeb和互联网大脑分割存储库(IBSR)获得的模拟和真实3-D数据集进行了深入评估,并将其与HAMMER(基于本地直方图(LHF),FFD,恶魔,以及基于Gabor过滤器的注册方法。结果表明,在五种广泛使用的图像配准方法中,该方法实现了最高的配准精度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号