Materialistic: Selecting Similar Materials in Images

Author:

Sharma Prafull12ORCID,Philip Julien3ORCID,Gharbi Michaël4ORCID,Freeman Bill1ORCID,Durand Fredo1ORCID,Deschaintre Valentin3ORCID

Affiliation:

1. Massachusetts Institute of Technology (MIT), Cambridge, United States of America

2. Adobe Research, Cambridge, United States of America

3. Adobe Research, London, United Kingdom

4. Adobe Research, San Francisco, United States of America

Abstract

Separating an image into meaningful underlying components is a crucial first step for both editing and understanding images. We present a method capable of selecting the regions of a photograph exhibiting the same material as an artist-chosen area. Our proposed approach is robust to shading, specular highlights, and cast shadows, enabling selection in real images. As we do not rely on semantic segmentation (different woods or metal should not be selected together), we formulate the problem as a similarity-based grouping problem based on a user-provided image location. In particular, we propose to leverage the unsupervised DINO [Caron et al. 2021] features coupled with a proposed Cross-Similarity Feature Weighting module and an MLP head to extract material similarities in an image. We train our model on a new synthetic image dataset, that we release. We show that our method generalizes well to real-world images. We carefully analyze our model's behavior on varying material properties and lighting. Additionally, we evaluate it against a hand-annotated benchmark of 50 real photographs. We further demonstrate our model on a set of applications, including material editing, in-video selection, and retrieval of object photographs with similar materials.

Funder

Toyota Research Institute, North America

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design

Reference92 articles.

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3. Reflectance modeling by neural texture synthesis

4. Two-shot SVBRDF capture for stationary materials

5. AppProp

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