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AniME: Adaptive Multi-Agent Planning for Long Animation Generation

Created by
  • Haebom

Author

Lisai Zhang, Baohan Xu, Siqian Yang, Mingyu Yin, Jing Liu, Chao Xu, Siqi Wang, Yidi Wu, Yuxin Hong, Zihao Zhang, Yanzhang Liang, Yudong Jiang

Outline

AniME is a director-driven, multi-agent system for automated feature-length animation production, covering the entire workflow from story to final film. The director agent maintains a global memory for the entire workflow and coordinates multiple sub-specialized agents. By incorporating sub-model directives and a custom Model Context Protocol (MCP), the expert agents adaptively select control conditions for various sub-tasks. AniME provides a scalable solution for AI-driven animation production, producing cinematic animations with consistent characters and synchronized audiovisual elements.

Takeaways, Limitations

Takeaways: Increasing the efficiency and scalability of AI-based animation production, suggesting the possibility of automating feature-length animation production, and implementing adaptive control functions for various sub-tasks.
Limitations: Lack of concrete evaluation of the performance and quality of the current system, potential maintenance difficulties due to the complexity of MCP and multi-agent systems, and difficulty in fully automating the unpredictable creative process.
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