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SceneScape: Text-Driven Consistent Scene Generation abs: project page: text-driven perpetual view generation -- synthesizing long videos of arbitrary scenes solely from an input text describing the scene and camera poses

73,258 次观看 • 3 年前 •via X (Twitter)

7 条评论

Nilu Kulasingham 的头像
Nilu Kulasingham3 年前

holy *** this is going to be huge for video games

The AI Race 🏁 的头像
The AI Race 🏁3 年前

this will be massive for video games but also for future viral Seinfeld simulations and entertainment writ large

Umar Farooq 的头像
Umar Farooq3 年前

Subway surfer with infinite possibilities, this is going to be a game changer if we can add it to Unity3D and create meshes on runtime with infinite possibilities. Maybe change the gameplay type as per the mood of the user or his geograpical presence.

William Lamkin 的头像
William Lamkin3 年前

Very cool 😎

Olivier Lattrez 的头像
Olivier Lattrez3 年前

@memdotai mem it

Mem 的头像
Mem3 年前

@_akhaliq Saved! Here's the compiled thread: 🪄 AI-generated summary: "A new system called SceneScape can generate long, consistent videos of arbitrary scenes from an input text description and camera poses."

fakery 的头像
fakery3 年前

Y'all remember that one screen saver?

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126,548 次观看 • 2 年前