📄 论文总结
RAISECity:面向城市级现实对齐三维世界生成的多模态智能体框架 / RAISECity: A Multimodal Agent Framework for Reality-Aligned 3D World Generation at City-Scale
1️⃣ 一句话总结
这项研究提出了一个名为RAISECity的智能体框架,它利用多模态基础工具自动生成高质量、逼真且规模可达城市级别的三维世界,在感知质量上显著优于现有方法,为虚拟现实和具身智能等应用提供了强大基础。
City-scale 3D generation is of great importance for the development of embodied intelligence and world models. Existing methods, however, face significant challenges regarding quality, fidelity, and scalability in 3D world generation. Thus, we propose RAISECity, a \textbf{R}eality-\textbf{A}ligned \textbf{I}ntelligent \textbf{S}ynthesis \textbf{E}ngine that creates detailed, \textbf{C}ity-scale 3D worlds. We introduce an agentic framework that leverages diverse multimodal foundation tools to acquire real-world knowledge, maintain robust intermediate representations, and construct complex 3D scenes. This agentic design, featuring dynamic data processing, iterative self-reflection and refinement, and the invocation of advanced multimodal tools, minimizes cumulative errors and enhances overall performance. Extensive quantitative experiments and qualitative analyses validate the superior performance of RAISECity in real-world alignment, shape precision, texture fidelity, and aesthetics level, achieving over a 90% win-rate against existing baselines for overall perceptual quality. This combination of 3D quality, reality alignment, scalability, and seamless compatibility with computer graphics pipelines makes RAISECity a promising foundation for applications in immersive media, embodied intelligence, and world models.
RAISECity:面向城市级现实对齐三维世界生成的多模态智能体框架 / RAISECity: A Multimodal Agent Framework for Reality-Aligned 3D World Generation at City-Scale
这项研究提出了一个名为RAISECity的智能体框架,它利用多模态基础工具自动生成高质量、逼真且规模可达城市级别的三维世界,在感知质量上显著优于现有方法,为虚拟现实和具身智能等应用提供了强大基础。