AI RESEARCH
Realiz3D: 3D Generation Made Photorealistic via Domain-Aware Learning
arXiv CS.LG
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ArXi:2605.13852v1 Announce Type: cross We often aim to generate images that are both photorealistic and 3D-consistent, adhering to precise geometry, material, and viewpoint controls. Typically, this is achieved by fine-tuning an image generator, pre-trained on billions of real images, using renders of synthetic 3D assets, where annotations for control signals are available. While this approach can learn the desired controls, it often compromises the realism of the images due to domain gap between photographs and renders.