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ControlMat: Controlled Generative Approach to Material Capture by Giuseppe Vecchio et al. From a single photo to clean, realistics, tileable PBR materials with this diffusion-based matching model.

120,225 views • 2 years ago •via X (Twitter)

9 Comments

Two Minute Papers's profile picture
Two Minute Papers2 years ago

Congratulations! Sorry, I am on the phone - where is the supp. video this is from?

Ben Ferns's profile picture
Ben Ferns2 years ago

Hi! I'm just sharing the project (not one of the authors), but you can find that video on the supplemental page

Valentin Deschaintre's profile picture
Valentin Deschaintre2 years ago

@giuvecchio95 looks like your hard work is appreciated :)

Pete Thorne's profile picture
Pete Thorne2 years ago

Now this is more like it! Plenty of artists been asking for tools like this.

Pedro Silva's profile picture
Pedro Silva2 years ago

This is pretty cool

Bruno Galerne's profile picture
Bruno Galerne2 years ago

Impressive! @boubek

zak's profile picture
zak2 years ago

@kvollstaedt

Edzward's profile picture
Edzward2 years ago

Fake. Clearly achieved by the Dark Arts of Sorcery! 😳😳😳

Felix 'InterVR' Krell's profile picture
Felix 'InterVR' Krell2 years ago

@AnselmZielonka

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