Shape Registration in the Time of Transformers
–Neural Information Processing Systems
In this paper, we propose a transformer-based procedure for the efficient registration of non-rigid 3D point clouds. The proposed approach is data-driven and adopts for the first time the transformers architecture in the registration task. Our method is general and applies to different settings. Given a fixed template with some desired properties (e.g. Alternatively, given a pair of shapes, our method can register the first onto the second (or vice-versa), obtaining a high-quality dense correspondence between the two.In both contexts, the quality of our results enables us to target real applications such as texture transfer and shape interpolation.Furthermore, we also show that including an estimation of the underlying density of the surface eases the learning process.
Neural Information Processing Systems
Oct-9-2024, 22:15:39 GMT