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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 views • 1 year ago •via X (Twitter)

10 Comments

el.cine's profile picture
el.cine1 year ago

Paper:

TomLikesRobots🤖's profile picture
TomLikesRobots🤖1 year ago

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's profile picture
Hungry Donk-E1 year ago

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

MayorkingAI's profile picture
MayorkingAI1 year ago

very interesting!

el.cine's profile picture
el.cine1 year ago

👍👍

Ivan P.'s profile picture
Ivan P.1 year ago

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

Michael Ten 🌨🎶🫐🍀's profile picture
Michael Ten 🌨🎶🫐🍀1 year ago

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

el.cine's profile picture
el.cine1 year ago

It’s super quick mate

andwhynut's profile picture
andwhynut1 year ago

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

Teodora P L's profile picture
Teodora P L1 year ago

Ooo wow this is going to be killer for Teal Estate

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