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All these isometric buildings were generated with AI - from a single input image each (examples below 👇) Just a few minutes per 3D mesh (no textures yet). This is #Sparc3D, a new generative 3D model announced just a few days ago. 🧵

16,012 Aufrufe • vor 1 Jahr •via X (Twitter)

8 Kommentare

Profilbild von Emm | scenario.com
Emm | scenario.comvor 1 Jahr

This glb was all 100% generated. From one single image. Unreal.

Profilbild von Emm | scenario.com
Emm | scenario.comvor 1 Jahr

Sparc3D is a project by @zhhol141234, Math Magic, and Nanyang Technological University (Singapore 🇸🇬) "Sparse Representation and Construction for High-Resolution 3D Shapes Modeling" Read more at (+ demo available)

Profilbild von Emm | scenario.com
Emm | scenario.comvor 1 Jahr

Here's the Sagrada Familia in Barcelona

Profilbild von Mobile Scanner
Mobile Scannervor 1 Jahr

Scan any documents, convert images into text, PDF files, etc. 👍

Profilbild von Michael + puppetto.com
Michael + puppetto.comvor 1 Jahr

Ooooh these look tasty

Profilbild von Nanya⭐️
Nanya⭐️vor 1 Jahr

I am impressed

Profilbild von Heba AI
Heba AIvor 1 Jahr

Better than Hunyuan? It has some problems figuring out whats on the other side of the isometric object. Also the edges have unwanted bewels too often.

Profilbild von Emm | scenario.com
Emm | scenario.comvor 1 Jahr

Much more precise than Hunyuan though, in a lot of cases

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