Яндекс Метрика
3D-моделирование, Компьютерное зрение

Photo-Geometric Autoencoder

University of Oxford
3D reconstruction

Этот автоэнкодер от Оксфорда совершил прорыв в компьютерном зрении, научившись воссоздавать 3D-объекты из обычных плоских фото без помощи человека. ИИ мастерски раскладывает изображение на глубину, освещение и текстуру, используя природную симметрию предметов для точной реконструкции.

We propose a method to learn 3D deformable object categories from raw single-view images, without external supervision. The method is based on an autoencoder that factors each input image into depth, albedo, viewpoint and illumination. In order to disentangle these components without supervision, we use the fact that many object categories have, at least in principle, a symmetric structure. We show that reasoning about illumination allows us to exploit the underlying object symmetry even if the appearance is not symmetric due to shading. Furthermore, we model objects that are probably, but not certainly, symmetric by predicting a symmetry probability map, learned end-to-end with the other components of the model. Our experiments show that this method can recover very accurately the 3D shape of human faces, cat faces and cars from single-view images, without any supervision or a prior shape model. On benchmarks, we demonstrate superior accuracy compared to another method that uses supervision at the level of 2D image correspondences.

Что такое Photo-Geometric Autoencoder?+
Кто разработал Photo-Geometric Autoencoder?+
Какие задачи решает Photo-Geometric Autoencoder?+