首页> 外文会议>2011 8th IEEE International Symposium on Biomedical Imaging: From Nano to Macro >Collapsed-cone based deformation field regularization for nonrigid image registration
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Collapsed-cone based deformation field regularization for nonrigid image registration

机译:基于塌缩圆锥的变形场正则化用于非刚性图像配准

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Incorporating biomedical information into nonrigid image registration is an important approach to improve the registration quality and provide realistic results. However, previous tissue-dependent deformation field filtering incur a relatively high computation cost in order to obtain results of improved quality. In this paper, we propose a collapsed-cone based adaptive filtering method to reduce the computational overhead of regularization. The filter is designed to change its filtering parameters dynamically at each voxel according to the tissue characteristics and the deformation of the surrounding voxels. The proposed filter is integrated into the demons deformable registration method to evaluate its effectiveness and performance. The evaluation is performed on a set of 3D computed tomography (CT) images and the result quality is compared with the output of those without applying the tissue-dependent filter. The results show that our proposed method can preserve the global features better. Based on the measure of sum of squared differences (SSD), the proposed method is also found converging faster and leading to lower SSD.
机译:将生物医学信息纳入非刚性图像配准是提高配准质量并提供现实结果的重要方法。然而,先前的与组织有关的变形场滤波为了获得改进的质量而招致了相对较高的计算成本。在本文中,我们提出了一种基于塌缩圆锥的自适应滤波方法,以减少正则化的计算开销。过滤器设计为根据组织特征和周围体素的变形在每个体素上动态更改其过滤参数。所提出的过滤器被集成到恶魔的可变形配准方法中,以评估其有效性和性能。评估是在一组3D计算机断层扫描(CT)图像上执行的,并且将结果质量与那些不应用依赖于组织的滤镜的图像的输出进行比较。结果表明,本文提出的方法可以更好地保留全局特征。基于平方差和(SSD)的度量,发现该方法收敛速度更快,从而导致更低的SSD。

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