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📄 Abstract
Abstract: Developing embodied AI agents requires scalable training environments that
balance content diversity with physics accuracy. World simulators provide such
environments but face distinct limitations: video-based methods generate
diverse content but lack real-time physics feedback for interactive learning,
while physics-based engines provide accurate dynamics but face scalability
limitations from costly manual asset creation. We present Seed3D 1.0, a
foundation model that generates simulation-ready 3D assets from single images,
addressing the scalability challenge while maintaining physics rigor. Unlike
existing 3D generation models, our system produces assets with accurate
geometry, well-aligned textures, and realistic physically-based materials.
These assets can be directly integrated into physics engines with minimal
configuration, enabling deployment in robotic manipulation and simulation
training. Beyond individual objects, the system scales to complete scene
generation through assembling objects into coherent environments. By enabling
scalable simulation-ready content creation, Seed3D 1.0 provides a foundation
for advancing physics-based world simulators. Seed3D 1.0 is now available on
https://console.volcengine.com/ark/region:ark+cn-beijing/experience/vision?modelId=doubao-seed3d-1-0-250928&tab=Gen3D
Authors (28)
Jiashi Feng
Xiu Li
Jing Lin
Jiahang Liu
Gaohong Liu
Weiqiang Lou
+22 more
Submitted
October 22, 2025
Key Contributions
Seed3D 1.0 is a foundation model that generates simulation-ready 3D assets from single images, addressing the scalability challenge in creating training environments for embodied AI. It produces assets with accurate geometry, well-aligned textures, and realistic physically-based materials that can be directly integrated into physics engines, enabling scalable robotic manipulation and simulation training.
Business Value
Accelerates the development of embodied AI agents by providing a scalable way to generate diverse, physically accurate 3D assets and environments for training and simulation, reducing development time and cost.