4.7 Article

Photo-to-Shape Material Transfer for Diverse Structures

Journal

ACM TRANSACTIONS ON GRAPHICS
Volume 41, Issue 4, Pages -

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3528223.3530088

Keywords

image translation; relightable materials; 3D shape modeling

Funding

  1. NSFC [61872250, U2001206, U21B2023, 62161146005]
  2. GD Talent Plan [2019JC05X328]
  3. GD Natural Science Foundation [2021B1515020085]
  4. DEGP Key Project [2018KZDXM058, 2020SFKC059]
  5. Shenzhen Science and Technology Program [RCYX20210609103121030, RCJC20200714114435012, JCYJ20210324120213036]
  6. Natural Sciences and Engineering Research Council of Canada (NSERC)
  7. Guangdong Laboratory of Artificial Intelligence and Digital Economy (SZ)

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We propose an automatic method for assigning photorealistic relightable materials to 3D shapes. Our method combines image translation and material prediction neural networks to guide the assignment of materials based on a photo exemplar. The key ideas include establishing a correspondence between the exemplar and shape projection and using the translated images to guide material assignment for consistency.
We introduce a method for assigning photorealistic relightable materials to 3D shapes in an automatic manner. Our method takes as input a photo exemplar of a real object and a 3D object with segmentation, and uses the exemplar to guide the assignment of materials to the parts of the shape, so that the appearance of the resulting shape is as similar as possible to the exemplar. To accomplish this goal, our method combines an image translation neural network with a material assignment neural network. The image translation network translates the color from the exemplar to a projection of the 3D shape and the part segmentation from the projection to the exemplar. Then, the material prediction network assigns materials from a collection of realistic materials to the projected parts, based on the translated images and perceptual similarity of the materials. One key idea of our method is to use the translation network to establish a correspondence between the exemplar and shape projection, which allows us to transfer materials between objects with diverse structures. Another key idea of our method is to use the two pairs of (color, segmentation) images provided by the image translation to guide the material assignment, which enables us to ensure the consistency in the assignment. We demonstrate that our method allows us to assign materials to shapes so that their appearances better resemble the input exemplars, improving the quality of the results over the state-of-the-art method, and allowing us to automatically create thousands of shapes with high-quality photorealistic materials. Code and data for this paper are available at https://github.com/XiangyuSu611/TMT.

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