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This new AI tool is interesting! ReconX can create a 3D scene using just two images from different angles. Imagine if we could train our character with only 2 images instead of 10?

69,436 次观看 • 1 年前 •via X (Twitter)

10 条评论

el.cine 的头像
el.cine1 年前

Paper:

TomLikesRobots🤖 的头像
TomLikesRobots🤖1 年前

Interesting that it's not Google but they utilise Imagen and Phenaki. Unfortunately, it might also mean we won't get to play with it. This looks like a really interesting tool.

Hungry Donk-E 的头像
Hungry Donk-E1 年前

🥕Wow! This is awesome! I recently tried something similar here using i2v

MayorkingAI 的头像
MayorkingAI1 年前

very interesting!

el.cine 的头像
el.cine1 年前

👍👍

Ivan P. 的头像
Ivan P.1 年前

@SmagaAlex, we should explain how @Openmagic_ai functions in a similar manner.

Michael Ten 🌨🎶🫐🍀 的头像
Michael Ten 🌨🎶🫐🍀1 年前

That's pretty cool. Machine learning sure is advancing quickly

el.cine 的头像
el.cine1 年前

It’s super quick mate

andwhynut 的头像
andwhynut1 年前

pinta fresco este reconX, Thx for sharing!!! have u seen the new vidu?

Teodora P L 的头像
Teodora P L1 年前

Ooo wow this is going to be killer for Teal Estate

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74,698 次观看 • 1 年前