RoomPlanner: Explicit Layout Planner for Easier LLM-Driven 3D Room Generation

arXiv — cs.CVMonday, November 24, 2025 at 5:00:00 AM
  • RoomPlanner has been introduced as a pioneering framework for fully automatic 3D room generation, allowing users to create realistic indoor scenes using only short text inputs. The system utilizes a hierarchical structure of language-driven planners to convert ambiguous prompts into detailed scene descriptions, which are then used to generate 3D point clouds and optimize spatial arrangements for collision-free layouts.
  • This development is significant as it streamlines the process of creating 3D environments, making it accessible for various applications, including gaming, virtual reality, and architectural design. By eliminating the need for manual layout design, RoomPlanner enhances productivity and creativity in 3D content creation.
  • The emergence of RoomPlanner aligns with a growing trend in AI-driven generative technologies, which aim to simplify complex creative processes. Similar advancements in 3D generation, such as those seen in frameworks for 4D avatars and interactive worlds, highlight a broader shift towards integrating natural language processing with spatial design, potentially transforming how users interact with digital environments.
— via World Pulse Now AI Editorial System

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