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Dreamix: Video Diffusion Models are General Video Editors abs: project page: present diffusion-based method that is able to perform text-based motion and appearance editing of general videos

398,166 görüntüleme • 3 yıl önce •via X (Twitter)

10 Yorum

Abi profil fotoğrafı
Abi3 yıl önce

pre: "You won't believe your eyes!" post: "You can't believe your eyes!"

Rekt Adult (🩸,🩸) profil fotoğrafı
Rekt Adult (🩸,🩸)3 yıl önce

where/when/how can someone use it? they didn't include the code with the github page

Minute Movies profil fotoğrafı
Minute Movies3 yıl önce

excuse me what

William Lamkin profil fotoğrafı
William Lamkin3 yıl önce

Nice find. 3D + Motion and editing tools seem to be the subject of the next wave of papers behind audio-based GenAI models

Stern - uɹǝʇS profil fotoğrafı
Stern - uɹǝʇS3 yıl önce

@CoffeeVectors @TomLikesRobots @GanWeaving as soon as models of this fidelity ad coherence arrive publicly …… wow

Jason Murphy profil fotoğrafı
Jason Murphy3 yıl önce

Amazing!

Vic J profil fotoğrafı
Vic J3 yıl önce

@OliverLaufer

Bernard Bontemps profil fotoğrafı
Bernard Bontemps3 yıl önce

@Francescu

Leo Enin 🍰 profil fotoğrafı
Leo Enin 🍰3 yıl önce

Absolutely astonishing! Imagine graphic tools 10 years from now. Now imagine video games and movies in 20 years, given the progress we got over the last 20. And I'm not even talking about other industries here. The world is rapidly changing, and it's beautiful.

Guilherme profil fotoğrafı
Guilherme3 yıl önce

@BaixaEssaPorra

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71,232 görüntüleme • 1 yıl önce