Self-Evolving 3D Scene Generation from a Single Image

arXiv — cs.CVWednesday, December 10, 2025 at 5:00:00 AM
  • EvoScene has been introduced as a self-evolving framework capable of generating complete 3D scenes from a single image, addressing the limitations of existing image-to-3D generators that struggle with complex structures and textures. This innovative approach combines geometric reasoning and visual knowledge through three iterative stages, progressively enhancing both the structure and appearance of the generated scenes.
  • The development of EvoScene is significant as it eliminates the need for extensive training, allowing for more efficient and adaptable 3D scene generation. This advancement could lead to broader applications in fields such as virtual reality, gaming, and architectural visualization, where high-quality 3D representations are essential.
  • The introduction of EvoScene aligns with ongoing trends in AI and computer vision, where there is a growing emphasis on training-free methodologies and the integration of various generative models. This reflects a shift towards more flexible and efficient solutions in 3D scene generation, paralleling advancements in related areas such as video-derived identity generation and dynamic visual encoding.
— via World Pulse Now AI Editorial System

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