Dense Correspondences between Human Bodies via Learning Transformation Synchronization on Graphs

Neural Information Processing Systems 

We introduce an approach for establishing dense correspondences between partial scans of human models and a complete template model. Our approach's key novelty lies in formulating dense correspondence computation as initializing and synchronizing local transformations between the scan and the template model.