ICCV2019
Escaping Plato's Cave: 3D Shape From Adversarial Rendering
Philipp Henzler, Niloy J. Mitra, Tobias Ritschel
被引用 254 次
摘要
We introduce PLATONICGAN to discover the 3D structure of an object class from an unstructured collection of 2D images, i. e., where no relation between photos is known, except that they are showing instances of the same category. The key idea is to train a deep neural network to generate 3D shapes which, when rendered to images, are indistinguishable from ground truth images (for a discriminator) under various camera poses. Discriminating 2D images instead of 3D shapes allows tapping into unstructured 2D photo collections instead of relying on curated (e. g., aligned, annotated, etc.) 3D data sets. To establish constraints between 2D image observation and their 3D interpretation, we suggest a family of rendering layers that are effectively differentiable. This family includes visual hull, absorption-only (akin to x-ray), and emissionabsorption. We can successfully reconstruct 3D shapes from unstructured 2D images and extensively evaluate PLATON-ICGAN on a range of synthetic and real data sets achieving consistent improvements over baseline methods. We further show that PLATONICGAN can be combined with 3D supervision to improve on and in some cases even surpass the quality of 3D-supervised methods.