2D-3D模态翻译的循环一致生成渲染

Tristan Aumentado-Armstrong, Alex Levinshtein, Stavros Tsogkas, K. Derpanis, A. Jepson
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引用次数: 7

摘要

对于人类来说,视觉理解是天生的:给定一个3D形状,我们可以假设它在世界中的样子;给定一个2D图像,我们可以推断出可能产生它的3D结构。因此,我们可以在给定对象的2D视觉和3D结构模式之间进行转换。在计算机视觉的背景下,这对应于一个可学习的模块,它有两个目的:(i)生成3D对象的逼真渲染(形状到图像的翻译)和(ii)从图像推断出逼真的3D形状(图像到形状的翻译)。在本文中,我们学习了这样一个模块,同时意识到获取大型配对2D-3D数据集的困难。通过利用生成域翻译方法,我们能够定义一种只需要弱监督的学习算法,使用未配对的数据。生成的模型不仅能够从2D图像中执行3D形状、姿态和纹理推断,还可以生成新颖的纹理3D形状和渲染,类似于图形管道。更具体地说,我们的方法(i)推断出一个明确的3D网格表示,(ii)利用示例形状来正则化推理,(iii)只需要一个图像掩模(没有关键点或相机外部),以及(iv)具有生成能力。虽然先前的工作探索了这些属性的子集,但它们的组合是新颖的。我们展示了我们学习到的表示的实用性,以及它在图像生成和未配对的3D形状推理任务上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cycle-Consistent Generative Rendering for 2D-3D Modality Translation
For humans, visual understanding is inherently generative: given a 3D shape, we can postulate how it would look in the world; given a 2D image, we can infer the 3D structure that likely gave rise to it. We can thus translate between the 2D visual and 3D structural modalities of a given object. In the context of computer vision, this corresponds to a learnable module that serves two purposes: (i) generate a realistic rendering of a 3D object (shape-toimage translation) and (ii) infer a realistic 3D shape from an image (image-to-shape translation). In this paper, we learn such a module while being conscious of the difficulties in obtaining large paired 2D-3D datasets. By leveraging generative domain translation methods, we are able to define a learning algorithm that requires only weak supervision, with unpaired data. The resulting model is not only able to perform 3D shape, pose, and texture inference from 2D images, but can also generate novel textured 3D shapes and renders, similar to a graphics pipeline. More specifically, our method (i) infers an explicit 3D mesh representation, (ii) utilizes example shapes to regularize inference, (iii) requires only an image mask (no keypoints or camera extrinsics), and (iv) has generative capabilities. While prior work explores subsets of these properties, their combination is novel. We demonstrate the utility of our learned representation, as well as its performance on image generation and unpaired 3D shape inference tasks.
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