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ZeST: Zero-Shot Material Transfer from a Single Image

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We propose ZeST, a method for zero-shot material transfer to an object in the input image given a material exemplar image. ZeST leverages existing diffusion adapters to extract implicit material representation from the exemplar image. This representation is used to transfer the material using pre-trained inpainting diffusion model on the object in the input image using depth estimates as geometry cue and grayscale object shading as illumination cues. The method works on real images without any training resulting a zero-shot approach. Both qualitative and quantitative results on real and synthetic datasets demonstrate that ZeST outputs photorealistic images with transferred materials. We also show the application of ZeST to perform multiple edits and robust material assignment under different illuminations. Project Page: https://ttchengab.github.io/zest

Ta-Ying Cheng, Prafull Sharma, Andrew Markham, Niki Trigoni, Varun Jampani• 2024

Related benchmarks

TaskDatasetResultRank
Overall Appearance Transfer QualityCurated dataset 100 image pairs
DeQA4.023
6
Material TransferCurated dataset 100 image pairs
CLIP-T Score0.2737
6
Semantic-Aware Appearance TransferCurated dataset 100 image pairs
CLIP-I83.81
6
Material ApplicationMatSynth and Objaverse
PSNR16.72
4
Material ApplicationUser Study 20 queries on PolyHaven-rendered objects
Detail Preservation11
4
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