Guo Hongyu, Rangarajan Anand, Joshi Sarang C
Dept. of CAMS, Texas A&M University-Corpus Christi, USA.
Med Image Comput Comput Assist Interv. 2005;8(Pt 2):984-91. doi: 10.1007/11566489_121.
Matching 3D shapes is important in many medical imaging applications. We show that a joint clustering and diffeomorphism estimation strategy is capable of simultaneously estimating correspondences and a diffeomorphism between unlabeled 3D point-sets. Correspondence is established between the cluster centers and this is coupled with a simultaneous estimation of a 3D diffeomorphism of space. The number of clusters can be estimated by minimizing the Jensen-Shannon divergence on the registered data. We apply our algorithm to both synthetically warped 3D hippocampal shapes as well as real 3D hippocampal shapes from different subjects.
匹配3D形状在许多医学成像应用中都很重要。我们表明,一种联合聚类和微分同胚估计策略能够同时估计未标记3D点集之间的对应关系和微分同胚。在聚类中心之间建立对应关系,并将其与空间3D微分同胚的同时估计相结合。可以通过最小化配准数据上的 Jensen-Shannon 散度来估计聚类的数量。我们将我们的算法应用于合成扭曲的3D海马形状以及来自不同受试者的真实3D海马形状。