From Idea to Co-Creation: A Planner-Actor-Critic Framework for Agent Augmented 3D Modeling
- URL: http://arxiv.org/abs/2601.05016v1
- Date: Thu, 08 Jan 2026 15:18:12 GMT
- Title: From Idea to Co-Creation: A Planner-Actor-Critic Framework for Agent Augmented 3D Modeling
- Authors: Jin Gao, Saichandu Juluri,
- Abstract summary: We present a framework that extends the Actor-Critic architecture to creative 3D modeling through multi-agent self-reflection and human-in-the-loop supervision.<n>In this design, the Planner coordinates modeling steps, the Actor executes them, and the Critic provides iterative feedback, while human users act as supervisors and advisors throughout the process.
- Score: 13.750761293338854
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present a framework that extends the Actor-Critic architecture to creative 3D modeling through multi-agent self-reflection and human-in-the-loop supervision. While existing approaches rely on single-prompt agents that directly execute modeling commands via tools like Blender MCP, our approach introduces a Planner-Actor-Critic architecture. In this design, the Planner coordinates modeling steps, the Actor executes them, and the Critic provides iterative feedback, while human users act as supervisors and advisors throughout the process. Through systematic comparison between single-prompt modeling and our reflective multi-agent approach, we demonstrate improvements in geometric accuracy, aesthetic quality, and task completion rates across diverse 3D modeling scenarios. Our evaluation reveals that critic-guided reflection, combined with human supervisory input, reduces modeling errors and increases complexity and quality of the result compared to direct single-prompt execution. This work establishes that structured agent self-reflection, when augmented by human oversight and advisory guidance, produces higher-quality 3D models while maintaining efficient workflow integration through real-time Blender synchronization.
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