Yang Xuan, Pei Jihong, Shi Jingli
Biomed Eng Online. 2014;13 Suppl 2(Suppl 2):S2. doi: 10.1186/1475-925X-13-S2-S2. Epub 2014 Dec 11.
Robust point matching (RPM) has been extensively used in non-rigid registration of images to robustly register two sets of image points. However, except for the location at control points, RPM cannot estimate the consistent correspondence between two images because RPM is a unidirectional image matching approach. Therefore, it is an important issue to make an improvement in image registration based on RPM.
In our work, a consistent image registration approach based on the point sets matching is proposed to incorporate the property of inverse consistency and improve registration accuracy. Instead of only estimating the forward transformation between the source point sets and the target point sets in state-of-the-art RPM algorithms, the forward and backward transformations between two point sets are estimated concurrently in our algorithm. The inverse consistency constraints are introduced to the cost function of RPM and the fuzzy correspondences between two point sets are estimated based on both the forward and backward transformations simultaneously. A modified consistent landmark thin-plate spline registration is discussed in detail to find the forward and backward transformations during the optimization of RPM. The similarity of image content is also incorporated into point matching in order to improve image matching.
Synthetic data sets, medical images are employed to demonstrate and validate the performance of our approach. The inverse consistent errors of our algorithm are smaller than RPM. Especially, the topology of transformations is preserved well for our algorithm for the large deformation between point sets. Moreover, the distance errors of our algorithm are similar to that of RPM, and they maintain a downward trend as whole, which demonstrates the convergence of our algorithm. The registration errors for image registrations are evaluated also. Again, our algorithm achieves the lower registration errors in same iteration number. The determinant of the Jacobian matrix of the deformation field is used to analyse the smoothness of the forward and backward transformations. The forward and backward transformations estimated by our algorithm are smooth for small deformation. For registration of lung slices and individual brain slices, large or small determinant of the Jacobian matrix of the deformation fields are observed.
Results indicate the improvement of the proposed algorithm in bi-directional image registration and the decrease of the inverse consistent errors of the forward and the reverse transformations between two images.
鲁棒点匹配(RPM)已被广泛应用于图像的非刚性配准,以稳健地配准两组图像点。然而,除了控制点处的位置外,RPM无法估计两幅图像之间一致的对应关系,因为RPM是一种单向图像匹配方法。因此,基于RPM改进图像配准是一个重要问题。
在我们的工作中,提出了一种基于点集匹配的一致图像配准方法,以纳入反向一致性属性并提高配准精度。与现有RPM算法中仅估计源点集和目标点集之间的正向变换不同,我们的算法同时估计两个点集之间的正向和反向变换。将反向一致性约束引入RPM的代价函数,并基于正向和反向变换同时估计两个点集之间的模糊对应关系。详细讨论了一种改进的一致地标薄板样条配准,以在RPM优化过程中找到正向和反向变换。图像内容的相似性也被纳入点匹配中,以改善图像匹配。
使用合成数据集和医学图像来演示和验证我们方法的性能。我们算法的反向一致误差小于RPM。特别是,对于点集之间的大变形,我们的算法能很好地保留变换的拓扑结构。此外,我们算法的距离误差与RPM相似,并且整体上保持下降趋势,这证明了我们算法的收敛性。还评估了图像配准的配准误差。同样,我们的算法在相同迭代次数下实现了更低的配准误差。使用变形场雅可比矩阵的行列式来分析正向和反向变换的平滑性。对于小变形,我们算法估计的正向和反向变换是平滑的。对于肺切片和个体脑切片的配准,观察到变形场雅可比矩阵的行列式有大有小。
结果表明所提出的算法在双向图像配准方面有所改进,并且两幅图像之间正向和反向变换的反向一致误差有所降低。